2023-05-01 18:11:07 +02:00
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#include <cstddef>
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#include <cstdint>
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2023-04-20 03:14:14 +02:00
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#include <stdint.h>
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2023-04-21 21:59:17 +02:00
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#include <stdio.h>
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#include <atomic>
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ggml : add SOTA 2,3,4,5,6 bit k-quantizations (#1684)
* Starting to add k-quantization to ggml
I think it is better to have quantization separate from
ggml. For now just adding the k-quants there, but it would be
better to also factor out the existing ggml quantizations.
* Adding Q3_K and Q8_K (de)-quantization
* Q3_K now working on CUDA and AVX2/scalar
CUDA is not ideal - ~50% slower than Q4_0 for
single token prediction, about the same in batch
mode (perplexity). CPU single token is ~55 ms
(on Ryzen 7950X).
* Some improvement for Q3_K on CUDA
It is now ~22.5 ms/token on my GPU, so ~30% slower than Q4_0.
* Some more CUDA optimizations for Q3_K
Single token is now 20.5 ms/token (~20% slower than Q4_0).
Perplexity is on par with Q4_0.
* Adding Q4_K - scalar, AVX2, CUDA
Performance is the same or perhaps very slightly better than Q4_0 on the CPU.
On the GPU, single token prediction is ~10% better than Q4_0,
batch mode (perplexity is about the same).
* Adding Q6_K - scalar, AVX2, CUDA
Performance is ~40% lower compared to Q4_K on the CPU.
This is to be expected, considering that we are memory bound
on the CPU and the 6-bit model is ~44% larger than the 4-bit.
On the GPU, single token prediction is ~6% lower than Q4_0,
batch mode (perplexity) is even closer (but still slower).
* Adding Q5_K - scalar, AVX2, CUDA
Performance is ~20% lower compared to Q4_K on the CPU.
This is to be expected, considering that we are memory bound
on the CPU and the 5-bit model is ~22% larger than the 4-bit.
On the GPU, single token prediction is about the same as Q4_0
for both, single token and batch prediction.
* Per convention, all QX_K quantizations use Q5_K for output.weight
* Adding quantization mixes
* Quantization mixes: didn't quite get what I wanted in the last commit
* Q4_K dot product for ARM_NEON
* Q6_K dot product for ARM_NEON
* Q5_K dot product for ARM_NEON
* Adding Q3_K dot for ARM_NEON
It is 22% slower than Q4_K, despite the smaller model size.
On x86_64, where we are memory bound, the Q3_K model is
quite a bit faster than Q4_K.
* A very slightly faster ARM_NEON Q3_K dot
* Adding Q2_K - just CUDA for now
Token prediction is pretty good - about 15.5 ms on a RTX 4080.
Perplexity is about the same as Q4_K.
* Adding scalar and AVX2 Q2_K dot
* Adding ARM_NEON Q2_K dot
About the same performance as Q4_K.
* A slightly faster ARM_NEON Q2_K dot
Single token prediction is now ~36 ms on M2 Max.
The code is much simpler too.
* Fixed bug in Q2_K CUDA dot product kernel
Stranegly enough, for the few prompts I tried with the 7B model
the responses looked perfectly reasonable. Only realized something
is not quite right when I tried the larger models and started getting
nonse back.
In any case, Q2_K single token evaluation time on an RTX 4080 in a Ryzen7950X
box iusing CUDA and model fully loaded on the GPU are
~15.5 ms for 7B, ~25.4 ms for 13B, and ~55.8 ms for 30B.
The max number of layers that fit in VRAM for The 65B is 32.
With that, we get ~330 ms per token, which is not that much faster
than just running on the CPU (~470 ms per token).
* Don't print zeros/NaNs when no count histogram has been collected
* A 10% faster CUDA vector dot kernel for Q3_K
Q3_K is now running at ~18.5 ms / token on CUDA,
so the gap to Q4_0 is only 10%.
It seems memory acccess pattern is more important for
performance than the amount of computation the kernel
does.
* A slightly daster Q4_K AVX2 dot product
For perplexity, where we are less memory bound, time per
pass drops by ~5%. Barely measurable difference for single
token prediction.
* A slightly faster ARM_NEON A4_K dot product
* Minor
* Fix quantization error test
We cannot possibly be expecting rmse < 0.002 for 2- and 3-bit
quantization variants.
* Fix docker build
I have been sloppy with vector reinterpret casts on ARM_NEON.
It seems clang is very forgiving in that regard.
* Added forgotten ggml.o dependence on k_quants.h to the Makefile
* Had unintentionally committed the Makefile with -Ofast enabled
* ggml : rename k_quants -> ggml-quants-k, use lowercase in code
---------
Co-authored-by: Iwan Kawrakow <iwan.kawrakow@gmail.com>
Co-authored-by: Georgi Gerganov <ggerganov@gmail.com>
2023-06-05 21:56:18 +02:00
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#include <assert.h>
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2023-04-20 03:14:14 +02:00
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2023-05-01 18:11:07 +02:00
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#include <cuda_runtime.h>
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#include <cublas_v2.h>
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#include <cuda_fp16.h>
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#include "ggml-cuda.h"
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#include "ggml.h"
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static_assert(sizeof(half) == sizeof(ggml_fp16_t), "wrong fp16 size");
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#define CUDA_CHECK(err) \
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do { \
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cudaError_t err_ = (err); \
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if (err_ != cudaSuccess) { \
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fprintf(stderr, "CUDA error %d at %s:%d: %s\n", err_, __FILE__, __LINE__, \
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cudaGetErrorString(err_)); \
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exit(1); \
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} \
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} while (0)
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#define CUBLAS_CHECK(err) \
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do { \
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cublasStatus_t err_ = (err); \
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if (err_ != CUBLAS_STATUS_SUCCESS) { \
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fprintf(stderr, "cuBLAS error %d at %s:%d\n", err_, __FILE__, __LINE__); \
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exit(1); \
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} \
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} while (0)
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2023-05-13 15:38:36 +02:00
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typedef void (*dequantize_kernel_t)(const void * vx, const int ib, const int iqs, float & v0, float & v1);
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2023-05-01 18:11:07 +02:00
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typedef void (*to_fp32_cuda_t)(const void * x, float * y, int k, cudaStream_t stream);
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2023-05-13 15:38:36 +02:00
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typedef void (*dequantize_mul_mat_vec_cuda_t)(const void * vx, const float * y, float * dst, const int ncols, const int nrows, cudaStream_t stream);
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ggml : add SOTA 2,3,4,5,6 bit k-quantizations (#1684)
* Starting to add k-quantization to ggml
I think it is better to have quantization separate from
ggml. For now just adding the k-quants there, but it would be
better to also factor out the existing ggml quantizations.
* Adding Q3_K and Q8_K (de)-quantization
* Q3_K now working on CUDA and AVX2/scalar
CUDA is not ideal - ~50% slower than Q4_0 for
single token prediction, about the same in batch
mode (perplexity). CPU single token is ~55 ms
(on Ryzen 7950X).
* Some improvement for Q3_K on CUDA
It is now ~22.5 ms/token on my GPU, so ~30% slower than Q4_0.
* Some more CUDA optimizations for Q3_K
Single token is now 20.5 ms/token (~20% slower than Q4_0).
Perplexity is on par with Q4_0.
* Adding Q4_K - scalar, AVX2, CUDA
Performance is the same or perhaps very slightly better than Q4_0 on the CPU.
On the GPU, single token prediction is ~10% better than Q4_0,
batch mode (perplexity is about the same).
* Adding Q6_K - scalar, AVX2, CUDA
Performance is ~40% lower compared to Q4_K on the CPU.
This is to be expected, considering that we are memory bound
on the CPU and the 6-bit model is ~44% larger than the 4-bit.
On the GPU, single token prediction is ~6% lower than Q4_0,
batch mode (perplexity) is even closer (but still slower).
* Adding Q5_K - scalar, AVX2, CUDA
Performance is ~20% lower compared to Q4_K on the CPU.
This is to be expected, considering that we are memory bound
on the CPU and the 5-bit model is ~22% larger than the 4-bit.
On the GPU, single token prediction is about the same as Q4_0
for both, single token and batch prediction.
* Per convention, all QX_K quantizations use Q5_K for output.weight
* Adding quantization mixes
* Quantization mixes: didn't quite get what I wanted in the last commit
* Q4_K dot product for ARM_NEON
* Q6_K dot product for ARM_NEON
* Q5_K dot product for ARM_NEON
* Adding Q3_K dot for ARM_NEON
It is 22% slower than Q4_K, despite the smaller model size.
On x86_64, where we are memory bound, the Q3_K model is
quite a bit faster than Q4_K.
* A very slightly faster ARM_NEON Q3_K dot
* Adding Q2_K - just CUDA for now
Token prediction is pretty good - about 15.5 ms on a RTX 4080.
Perplexity is about the same as Q4_K.
* Adding scalar and AVX2 Q2_K dot
* Adding ARM_NEON Q2_K dot
About the same performance as Q4_K.
* A slightly faster ARM_NEON Q2_K dot
Single token prediction is now ~36 ms on M2 Max.
The code is much simpler too.
* Fixed bug in Q2_K CUDA dot product kernel
Stranegly enough, for the few prompts I tried with the 7B model
the responses looked perfectly reasonable. Only realized something
is not quite right when I tried the larger models and started getting
nonse back.
In any case, Q2_K single token evaluation time on an RTX 4080 in a Ryzen7950X
box iusing CUDA and model fully loaded on the GPU are
~15.5 ms for 7B, ~25.4 ms for 13B, and ~55.8 ms for 30B.
The max number of layers that fit in VRAM for The 65B is 32.
With that, we get ~330 ms per token, which is not that much faster
than just running on the CPU (~470 ms per token).
* Don't print zeros/NaNs when no count histogram has been collected
* A 10% faster CUDA vector dot kernel for Q3_K
Q3_K is now running at ~18.5 ms / token on CUDA,
so the gap to Q4_0 is only 10%.
It seems memory acccess pattern is more important for
performance than the amount of computation the kernel
does.
* A slightly daster Q4_K AVX2 dot product
For perplexity, where we are less memory bound, time per
pass drops by ~5%. Barely measurable difference for single
token prediction.
* A slightly faster ARM_NEON A4_K dot product
* Minor
* Fix quantization error test
We cannot possibly be expecting rmse < 0.002 for 2- and 3-bit
quantization variants.
* Fix docker build
I have been sloppy with vector reinterpret casts on ARM_NEON.
It seems clang is very forgiving in that regard.
* Added forgotten ggml.o dependence on k_quants.h to the Makefile
* Had unintentionally committed the Makefile with -Ofast enabled
* ggml : rename k_quants -> ggml-quants-k, use lowercase in code
---------
Co-authored-by: Iwan Kawrakow <iwan.kawrakow@gmail.com>
Co-authored-by: Georgi Gerganov <ggerganov@gmail.com>
2023-06-05 21:56:18 +02:00
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typedef void (*dot_kernel_k_t)(const void * vx, const int ib, const int iqs, const float * y, float & v);
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2023-05-13 15:38:36 +02:00
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// QK = number of values after dequantization
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// QR = QK / number of values before dequantization
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2023-04-20 03:14:14 +02:00
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#define QK4_0 32
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2023-05-13 15:38:36 +02:00
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#define QR4_0 2
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2023-04-20 03:14:14 +02:00
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typedef struct {
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2023-05-19 21:17:18 +02:00
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half d; // delta
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2023-04-20 03:14:14 +02:00
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uint8_t qs[QK4_0 / 2]; // nibbles / quants
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} block_q4_0;
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2023-05-19 21:17:18 +02:00
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static_assert(sizeof(block_q4_0) == sizeof(ggml_fp16_t) + QK4_0 / 2, "wrong q4_0 block size/padding");
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2023-04-20 03:14:14 +02:00
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#define QK4_1 32
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2023-05-13 15:38:36 +02:00
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#define QR4_1 2
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2023-04-20 03:14:14 +02:00
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typedef struct {
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2023-05-19 21:17:18 +02:00
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half d; // delta
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half m; // min
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2023-04-20 03:14:14 +02:00
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uint8_t qs[QK4_1 / 2]; // nibbles / quants
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} block_q4_1;
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2023-05-19 21:17:18 +02:00
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static_assert(sizeof(block_q4_1) == sizeof(ggml_fp16_t) * 2 + QK4_1 / 2, "wrong q4_1 block size/padding");
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2023-04-20 03:14:14 +02:00
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2023-04-26 22:14:13 +02:00
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#define QK5_0 32
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2023-05-13 15:38:36 +02:00
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#define QR5_0 2
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2023-04-26 22:14:13 +02:00
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typedef struct {
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2023-05-01 18:11:07 +02:00
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half d; // delta
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2023-04-26 22:14:13 +02:00
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uint8_t qh[4]; // 5-th bit of quants
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uint8_t qs[QK5_0 / 2]; // nibbles / quants
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} block_q5_0;
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static_assert(sizeof(block_q5_0) == sizeof(ggml_fp16_t) + sizeof(uint32_t) + QK5_0 / 2, "wrong q5_0 block size/padding");
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#define QK5_1 32
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2023-05-13 15:38:36 +02:00
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#define QR5_1 2
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2023-04-26 22:14:13 +02:00
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typedef struct {
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2023-05-01 18:11:07 +02:00
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half d; // delta
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half m; // min
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uint8_t qh[4]; // 5-th bit of quants
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2023-04-26 22:14:13 +02:00
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uint8_t qs[QK5_1 / 2]; // nibbles / quants
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} block_q5_1;
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static_assert(sizeof(block_q5_1) == 2 * sizeof(ggml_fp16_t) + sizeof(uint32_t) + QK5_1 / 2, "wrong q5_1 block size/padding");
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2023-04-25 22:40:51 +02:00
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#define QK8_0 32
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2023-05-13 15:38:36 +02:00
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#define QR8_0 1
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2023-04-25 22:40:51 +02:00
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typedef struct {
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2023-05-19 21:17:18 +02:00
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half d; // delta
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2023-04-25 22:40:51 +02:00
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int8_t qs[QK8_0]; // quants
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} block_q8_0;
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2023-05-19 21:17:18 +02:00
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static_assert(sizeof(block_q8_0) == sizeof(ggml_fp16_t) + QK8_0, "wrong q8_0 block size/padding");
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2023-04-25 22:40:51 +02:00
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ggml : add SOTA 2,3,4,5,6 bit k-quantizations (#1684)
* Starting to add k-quantization to ggml
I think it is better to have quantization separate from
ggml. For now just adding the k-quants there, but it would be
better to also factor out the existing ggml quantizations.
* Adding Q3_K and Q8_K (de)-quantization
* Q3_K now working on CUDA and AVX2/scalar
CUDA is not ideal - ~50% slower than Q4_0 for
single token prediction, about the same in batch
mode (perplexity). CPU single token is ~55 ms
(on Ryzen 7950X).
* Some improvement for Q3_K on CUDA
It is now ~22.5 ms/token on my GPU, so ~30% slower than Q4_0.
* Some more CUDA optimizations for Q3_K
Single token is now 20.5 ms/token (~20% slower than Q4_0).
Perplexity is on par with Q4_0.
* Adding Q4_K - scalar, AVX2, CUDA
Performance is the same or perhaps very slightly better than Q4_0 on the CPU.
On the GPU, single token prediction is ~10% better than Q4_0,
batch mode (perplexity is about the same).
* Adding Q6_K - scalar, AVX2, CUDA
Performance is ~40% lower compared to Q4_K on the CPU.
This is to be expected, considering that we are memory bound
on the CPU and the 6-bit model is ~44% larger than the 4-bit.
On the GPU, single token prediction is ~6% lower than Q4_0,
batch mode (perplexity) is even closer (but still slower).
* Adding Q5_K - scalar, AVX2, CUDA
Performance is ~20% lower compared to Q4_K on the CPU.
This is to be expected, considering that we are memory bound
on the CPU and the 5-bit model is ~22% larger than the 4-bit.
On the GPU, single token prediction is about the same as Q4_0
for both, single token and batch prediction.
* Per convention, all QX_K quantizations use Q5_K for output.weight
* Adding quantization mixes
* Quantization mixes: didn't quite get what I wanted in the last commit
* Q4_K dot product for ARM_NEON
* Q6_K dot product for ARM_NEON
* Q5_K dot product for ARM_NEON
* Adding Q3_K dot for ARM_NEON
It is 22% slower than Q4_K, despite the smaller model size.
On x86_64, where we are memory bound, the Q3_K model is
quite a bit faster than Q4_K.
* A very slightly faster ARM_NEON Q3_K dot
* Adding Q2_K - just CUDA for now
Token prediction is pretty good - about 15.5 ms on a RTX 4080.
Perplexity is about the same as Q4_K.
* Adding scalar and AVX2 Q2_K dot
* Adding ARM_NEON Q2_K dot
About the same performance as Q4_K.
* A slightly faster ARM_NEON Q2_K dot
Single token prediction is now ~36 ms on M2 Max.
The code is much simpler too.
* Fixed bug in Q2_K CUDA dot product kernel
Stranegly enough, for the few prompts I tried with the 7B model
the responses looked perfectly reasonable. Only realized something
is not quite right when I tried the larger models and started getting
nonse back.
In any case, Q2_K single token evaluation time on an RTX 4080 in a Ryzen7950X
box iusing CUDA and model fully loaded on the GPU are
~15.5 ms for 7B, ~25.4 ms for 13B, and ~55.8 ms for 30B.
The max number of layers that fit in VRAM for The 65B is 32.
With that, we get ~330 ms per token, which is not that much faster
than just running on the CPU (~470 ms per token).
* Don't print zeros/NaNs when no count histogram has been collected
* A 10% faster CUDA vector dot kernel for Q3_K
Q3_K is now running at ~18.5 ms / token on CUDA,
so the gap to Q4_0 is only 10%.
It seems memory acccess pattern is more important for
performance than the amount of computation the kernel
does.
* A slightly daster Q4_K AVX2 dot product
For perplexity, where we are less memory bound, time per
pass drops by ~5%. Barely measurable difference for single
token prediction.
* A slightly faster ARM_NEON A4_K dot product
* Minor
* Fix quantization error test
We cannot possibly be expecting rmse < 0.002 for 2- and 3-bit
quantization variants.
* Fix docker build
I have been sloppy with vector reinterpret casts on ARM_NEON.
It seems clang is very forgiving in that regard.
* Added forgotten ggml.o dependence on k_quants.h to the Makefile
* Had unintentionally committed the Makefile with -Ofast enabled
* ggml : rename k_quants -> ggml-quants-k, use lowercase in code
---------
Co-authored-by: Iwan Kawrakow <iwan.kawrakow@gmail.com>
Co-authored-by: Georgi Gerganov <ggerganov@gmail.com>
2023-06-05 21:56:18 +02:00
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//================================= k-quants
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#define QK_K 256
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typedef struct {
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uint8_t scales[QK_K/16]; // scales and mins, quantized with 4 bits
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uint8_t qs[QK_K/4]; // quants
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half d; // super-block scale for quantized scales
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half dmin; // super-block scale for quantized mins
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} block_q2_k;
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static_assert(sizeof(block_q2_k) == 2*sizeof(ggml_fp16_t) + QK_K/16 + QK_K/4, "wrong q2_k block size/padding");
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typedef struct {
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uint8_t hmask[QK_K/8];
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uint8_t qs[QK_K/4]; // nibbles / quants
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uint8_t scales[3*QK_K/64];
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half d;
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} block_q3_k;
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static_assert(sizeof(block_q3_k) == sizeof(ggml_fp16_t) + QK_K / 4 + 11 * QK_K / 64, "wrong q3_k block size/padding");
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typedef struct {
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half d; // super-block scale for quantized scales
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half dmin; // super-block scale for quantized mins
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uint8_t scales[3*QK_K/64]; // scales, quantized with 6 bits
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uint8_t qs[QK_K/2]; // 4--bit quants
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} block_q4_k;
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static_assert(sizeof(block_q4_k) == 2*sizeof(ggml_fp16_t) + 3*QK_K/64 + QK_K/2, "wrong q4_k block size/padding");
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typedef struct {
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half d; // super-block scale for quantized scales
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half dmin; // super-block scale for quantized mins
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uint8_t scales[3*QK_K/64]; // scales, quantized with 6 bits
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uint8_t qh[QK_K/8]; // quants, high bit
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uint8_t qs[QK_K/2]; // quants, low 4 bits
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} block_q5_k;
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static_assert(sizeof(block_q5_k) == 2*sizeof(ggml_fp16_t) + 3*QK_K/64 + QK_K/2 + QK_K/8, "wrong q5_k block size/padding");
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typedef struct {
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uint8_t ql[QK_K/2]; // quants, lower 4 bits
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uint8_t qh[QK_K/4]; // quants, upper 2 bits
|
|
|
|
int8_t scales[QK_K/16]; // scales
|
|
|
|
half d; // delta
|
|
|
|
} block_q6_k;
|
|
|
|
static_assert(sizeof(block_q6_k) == sizeof(ggml_fp16_t) + 13*QK_K/16, "wrong q6_k block size/padding");
|
|
|
|
|
2023-05-25 23:07:29 +02:00
|
|
|
#define WARP_SIZE 32
|
|
|
|
|
cuda : loading models directly into VRAM, norm calculation on GPU, broadcasting for ggml_mul (#1483)
* Broadcasting for ggml_mul
* CUDA kernel for ggml_mul, norms in VRAM
* GPU weights not in RAM, direct loading with cuFile
* fixup! GPU weights not in RAM, direct loading with cuFile
* fixup! GPU weights not in RAM, direct loading with cuFile
* define default model path once, sync path with readme (#1366)
* ~7% faster Q5_1 AVX2 code (#1477)
* convert.py: Support models which are stored in a single pytorch_model.bin (#1469)
* Support models in a single pytorch_model.bin
* Remove spurious line with typo
* benchmark-matmul: Print the average of the test results (#1490)
* Remove unused n_parts parameter (#1509)
* Fixes #1511 lambda issue for w64devkit (mingw) (#1513)
* Fix for w64devkit and mingw
* make kv_f16 the default for api users (#1517)
* minor : fix compile warnings
* readme : adds WizardLM to the list of supported models (#1485)
* main : make reverse prompt option act as a stop token in non-interactive mode (#1032)
* Make reverse prompt option act as a stop token in non-interactive scenarios
* Making requested review changes
* Update gpt_params_parse and fix a merge error
* Revert "Update gpt_params_parse and fix a merge error"
This reverts commit 2bb2ff1748513591ad45b175a75ed1d8089d84c8.
* Update gpt_params_parse and fix a merge error take 2
* examples : add persistent chat (#1495)
* examples : add persistent chat
* examples : fix whitespace
---------
Co-authored-by: Georgi Gerganov <ggerganov@gmail.com>
* tests : add missing header
* ggml : use F16 instead of F32 in Q4_0, Q4_1, Q8_0 (#1508)
* ggml : use F16 instead of F32 in Q4_0, Q4_1 and Q8_0
* llama : bump LLAMA_FILE_VERSION to 3
* cuda : update Q4 and Q8 dequantize kernels
* ggml : fix AVX dot products
* readme : update performance table + hot topics
* ggml : fix scalar implementation of Q4_1 dot
* llama : fix compile warnings in llama_set_state_data()
* llama : fix name shadowing and C4146 (#1526)
* Fix name shadowing and C4146
* Fix if macros not using defined when required
* Update llama-util.h
Co-authored-by: github-actions[bot] <41898282+github-actions[bot]@users.noreply.github.com>
* Update llama-util.h
Co-authored-by: github-actions[bot] <41898282+github-actions[bot]@users.noreply.github.com>
* Code style
Co-authored-by: Georgi Gerganov <ggerganov@gmail.com>
---------
Co-authored-by: github-actions[bot] <41898282+github-actions[bot]@users.noreply.github.com>
Co-authored-by: Georgi Gerganov <ggerganov@gmail.com>
* Fix for mingw (#1462)
* llama : add llama_init_backend() API (close #1527)
* feature : add blis and other BLAS implementation support (#1502)
* feature: add blis support
* feature: allow all BLA_VENDOR to be assigned in cmake arguments. align with whisper.cpp pr 927
* fix: version detection for BLA_SIZEOF_INTEGER, recover min version of cmake
* Fix typo in INTEGER
Co-authored-by: Georgi Gerganov <ggerganov@gmail.com>
---------
Co-authored-by: Georgi Gerganov <ggerganov@gmail.com>
* Revert "feature : add blis and other BLAS implementation support (#1502)"
This reverts commit 07e9ace0f9da424d82e75df969642522880feb92.
* GPU weights not in RAM, direct loading with cuFile
* llama : code style fixes + progress print fix
* ggml : ggml_mul better broadcast support
* cmake : workarounds for cufile when CMake version < 3.25
* gg rebase fixup
* Loop in llama.cpp, fixed progress callback
* Attempt clang-tidy fix
* llama : fix vram size computation
* Add forgotten fclose()
---------
Co-authored-by: András Salamon <ott2@users.noreply.github.com>
Co-authored-by: Ilya Kurdyukov <59548320+ilyakurdyukov@users.noreply.github.com>
Co-authored-by: Tom Jobbins <784313+TheBloke@users.noreply.github.com>
Co-authored-by: rankaiyx <rankaiyx@rankaiyx.com>
Co-authored-by: Stephan Walter <stephan@walter.name>
Co-authored-by: DannyDaemonic <DannyDaemonic@gmail.com>
Co-authored-by: Erik Scholz <Green-Sky@users.noreply.github.com>
Co-authored-by: Georgi Gerganov <ggerganov@gmail.com>
Co-authored-by: David Kennedy <dakennedyd@gmail.com>
Co-authored-by: Jason McCartney <jmac@theroot.org>
Co-authored-by: Evan Jones <evan.q.jones@gmail.com>
Co-authored-by: Maxime <672982+maximegmd@users.noreply.github.com>
Co-authored-by: github-actions[bot] <41898282+github-actions[bot]@users.noreply.github.com>
Co-authored-by: Zenix <zenixls2@gmail.com>
2023-05-20 14:19:28 +02:00
|
|
|
#define CUDA_MUL_BLOCK_SIZE 256
|
2023-05-25 23:07:29 +02:00
|
|
|
|
2023-05-14 20:53:23 +02:00
|
|
|
#define CUDA_DEQUANTIZE_BLOCK_SIZE 256
|
2023-05-25 23:07:29 +02:00
|
|
|
|
|
|
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// dmmv = dequantize_mul_mat_vec
|
|
|
|
#ifndef GGML_CUDA_DMMV_X
|
|
|
|
#define GGML_CUDA_DMMV_X 32
|
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|
|
#endif
|
|
|
|
#ifndef GGML_CUDA_DMMV_Y
|
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|
|
#define GGML_CUDA_DMMV_Y 1
|
|
|
|
#endif
|
2023-05-13 15:38:36 +02:00
|
|
|
|
cuda : loading models directly into VRAM, norm calculation on GPU, broadcasting for ggml_mul (#1483)
* Broadcasting for ggml_mul
* CUDA kernel for ggml_mul, norms in VRAM
* GPU weights not in RAM, direct loading with cuFile
* fixup! GPU weights not in RAM, direct loading with cuFile
* fixup! GPU weights not in RAM, direct loading with cuFile
* define default model path once, sync path with readme (#1366)
* ~7% faster Q5_1 AVX2 code (#1477)
* convert.py: Support models which are stored in a single pytorch_model.bin (#1469)
* Support models in a single pytorch_model.bin
* Remove spurious line with typo
* benchmark-matmul: Print the average of the test results (#1490)
* Remove unused n_parts parameter (#1509)
* Fixes #1511 lambda issue for w64devkit (mingw) (#1513)
* Fix for w64devkit and mingw
* make kv_f16 the default for api users (#1517)
* minor : fix compile warnings
* readme : adds WizardLM to the list of supported models (#1485)
* main : make reverse prompt option act as a stop token in non-interactive mode (#1032)
* Make reverse prompt option act as a stop token in non-interactive scenarios
* Making requested review changes
* Update gpt_params_parse and fix a merge error
* Revert "Update gpt_params_parse and fix a merge error"
This reverts commit 2bb2ff1748513591ad45b175a75ed1d8089d84c8.
* Update gpt_params_parse and fix a merge error take 2
* examples : add persistent chat (#1495)
* examples : add persistent chat
* examples : fix whitespace
---------
Co-authored-by: Georgi Gerganov <ggerganov@gmail.com>
* tests : add missing header
* ggml : use F16 instead of F32 in Q4_0, Q4_1, Q8_0 (#1508)
* ggml : use F16 instead of F32 in Q4_0, Q4_1 and Q8_0
* llama : bump LLAMA_FILE_VERSION to 3
* cuda : update Q4 and Q8 dequantize kernels
* ggml : fix AVX dot products
* readme : update performance table + hot topics
* ggml : fix scalar implementation of Q4_1 dot
* llama : fix compile warnings in llama_set_state_data()
* llama : fix name shadowing and C4146 (#1526)
* Fix name shadowing and C4146
* Fix if macros not using defined when required
* Update llama-util.h
Co-authored-by: github-actions[bot] <41898282+github-actions[bot]@users.noreply.github.com>
* Update llama-util.h
Co-authored-by: github-actions[bot] <41898282+github-actions[bot]@users.noreply.github.com>
* Code style
Co-authored-by: Georgi Gerganov <ggerganov@gmail.com>
---------
Co-authored-by: github-actions[bot] <41898282+github-actions[bot]@users.noreply.github.com>
Co-authored-by: Georgi Gerganov <ggerganov@gmail.com>
* Fix for mingw (#1462)
* llama : add llama_init_backend() API (close #1527)
* feature : add blis and other BLAS implementation support (#1502)
* feature: add blis support
* feature: allow all BLA_VENDOR to be assigned in cmake arguments. align with whisper.cpp pr 927
* fix: version detection for BLA_SIZEOF_INTEGER, recover min version of cmake
* Fix typo in INTEGER
Co-authored-by: Georgi Gerganov <ggerganov@gmail.com>
---------
Co-authored-by: Georgi Gerganov <ggerganov@gmail.com>
* Revert "feature : add blis and other BLAS implementation support (#1502)"
This reverts commit 07e9ace0f9da424d82e75df969642522880feb92.
* GPU weights not in RAM, direct loading with cuFile
* llama : code style fixes + progress print fix
* ggml : ggml_mul better broadcast support
* cmake : workarounds for cufile when CMake version < 3.25
* gg rebase fixup
* Loop in llama.cpp, fixed progress callback
* Attempt clang-tidy fix
* llama : fix vram size computation
* Add forgotten fclose()
---------
Co-authored-by: András Salamon <ott2@users.noreply.github.com>
Co-authored-by: Ilya Kurdyukov <59548320+ilyakurdyukov@users.noreply.github.com>
Co-authored-by: Tom Jobbins <784313+TheBloke@users.noreply.github.com>
Co-authored-by: rankaiyx <rankaiyx@rankaiyx.com>
Co-authored-by: Stephan Walter <stephan@walter.name>
Co-authored-by: DannyDaemonic <DannyDaemonic@gmail.com>
Co-authored-by: Erik Scholz <Green-Sky@users.noreply.github.com>
Co-authored-by: Georgi Gerganov <ggerganov@gmail.com>
Co-authored-by: David Kennedy <dakennedyd@gmail.com>
Co-authored-by: Jason McCartney <jmac@theroot.org>
Co-authored-by: Evan Jones <evan.q.jones@gmail.com>
Co-authored-by: Maxime <672982+maximegmd@users.noreply.github.com>
Co-authored-by: github-actions[bot] <41898282+github-actions[bot]@users.noreply.github.com>
Co-authored-by: Zenix <zenixls2@gmail.com>
2023-05-20 14:19:28 +02:00
|
|
|
static __global__ void mul_f32(const float * x, const float * y, float * dst, const int kx, const int ky) {
|
|
|
|
const int i = blockDim.x*blockIdx.x + threadIdx.x;
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|
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|
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|
if (i >= kx) {
|
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return;
|
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|
}
|
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|
dst[i] = x[i] * y[i%ky];
|
|
|
|
}
|
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|
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|
2023-05-13 15:38:36 +02:00
|
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|
static __device__ void dequantize_q4_0(const void * vx, const int ib, const int iqs, float & v0, float & v1){
|
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|
|
const block_q4_0 * x = (const block_q4_0 *) vx;
|
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|
|
|
|
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|
const float d = x[ib].d;
|
|
|
|
|
|
|
|
const uint8_t vui = x[ib].qs[iqs];
|
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|
|
|
|
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|
const int8_t vi0 = vui & 0xF;
|
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const int8_t vi1 = vui >> 4;
|
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|
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|
v0 = (vi0 - 8)*d;
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|
v1 = (vi1 - 8)*d;
|
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|
|
}
|
|
|
|
|
|
|
|
static __device__ void dequantize_q4_1(const void * vx, const int ib, const int iqs, float & v0, float & v1){
|
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|
|
const block_q4_1 * x = (const block_q4_1 *) vx;
|
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|
|
|
|
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|
const float d = x[ib].d;
|
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|
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const float m = x[ib].m;
|
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|
|
|
|
|
|
const uint8_t vui = x[ib].qs[iqs];
|
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|
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|
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|
const int8_t vi0 = vui & 0xF;
|
|
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|
const int8_t vi1 = vui >> 4;
|
|
|
|
|
|
|
|
v0 = vi0*d + m;
|
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|
v1 = vi1*d + m;
|
|
|
|
}
|
|
|
|
|
|
|
|
static __device__ void dequantize_q5_0(const void * vx, const int ib, const int iqs, float & v0, float & v1){
|
|
|
|
const block_q5_0 * x = (const block_q5_0 *) vx;
|
|
|
|
|
|
|
|
const float d = x[ib].d;
|
|
|
|
|
|
|
|
uint32_t qh;
|
|
|
|
memcpy(&qh, x[ib].qh, sizeof(qh));
|
|
|
|
|
|
|
|
const uint8_t xh_0 = ((qh >> (iqs + 0)) << 4) & 0x10;
|
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|
|
const uint8_t xh_1 = ((qh >> (iqs + 12)) ) & 0x10;
|
|
|
|
|
|
|
|
const int32_t x0 = ((x[ib].qs[iqs] & 0xf) | xh_0) - 16;
|
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|
const int32_t x1 = ((x[ib].qs[iqs] >> 4) | xh_1) - 16;
|
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|
|
|
|
|
|
v0 = x0*d;
|
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|
v1 = x1*d;
|
|
|
|
}
|
|
|
|
|
|
|
|
static __device__ void dequantize_q5_1(const void * vx, const int ib, const int iqs, float & v0, float & v1){
|
|
|
|
const block_q5_1 * x = (const block_q5_1 *) vx;
|
|
|
|
|
|
|
|
const float d = x[ib].d;
|
|
|
|
const float m = x[ib].m;
|
|
|
|
|
|
|
|
uint32_t qh;
|
|
|
|
memcpy(&qh, x[ib].qh, sizeof(qh));
|
|
|
|
|
|
|
|
const uint8_t xh_0 = ((qh >> (iqs + 0)) << 4) & 0x10;
|
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|
|
const uint8_t xh_1 = ((qh >> (iqs + 12)) ) & 0x10;
|
|
|
|
|
|
|
|
const int32_t x0 = ((x[ib].qs[iqs] & 0xf) | xh_0);
|
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|
|
const int32_t x1 = ((x[ib].qs[iqs] >> 4) | xh_1);
|
|
|
|
|
|
|
|
v0 = x0*d + m;
|
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|
v1 = x1*d + m;
|
|
|
|
}
|
|
|
|
|
|
|
|
static __device__ void dequantize_q8_0(const void * vx, const int ib, const int iqs, float & v0, float & v1){
|
|
|
|
const block_q8_0 * x = (const block_q8_0 *) vx;
|
|
|
|
|
|
|
|
const float d = x[ib].d;
|
|
|
|
|
|
|
|
const int8_t vi0 = x[ib].qs[iqs + 0];
|
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|
const int8_t vi1 = x[ib].qs[iqs + 1];
|
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|
|
|
|
|
|
v0 = vi0*d;
|
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|
v1 = vi1*d;
|
|
|
|
}
|
|
|
|
|
ggml : add SOTA 2,3,4,5,6 bit k-quantizations (#1684)
* Starting to add k-quantization to ggml
I think it is better to have quantization separate from
ggml. For now just adding the k-quants there, but it would be
better to also factor out the existing ggml quantizations.
* Adding Q3_K and Q8_K (de)-quantization
* Q3_K now working on CUDA and AVX2/scalar
CUDA is not ideal - ~50% slower than Q4_0 for
single token prediction, about the same in batch
mode (perplexity). CPU single token is ~55 ms
(on Ryzen 7950X).
* Some improvement for Q3_K on CUDA
It is now ~22.5 ms/token on my GPU, so ~30% slower than Q4_0.
* Some more CUDA optimizations for Q3_K
Single token is now 20.5 ms/token (~20% slower than Q4_0).
Perplexity is on par with Q4_0.
* Adding Q4_K - scalar, AVX2, CUDA
Performance is the same or perhaps very slightly better than Q4_0 on the CPU.
On the GPU, single token prediction is ~10% better than Q4_0,
batch mode (perplexity is about the same).
* Adding Q6_K - scalar, AVX2, CUDA
Performance is ~40% lower compared to Q4_K on the CPU.
This is to be expected, considering that we are memory bound
on the CPU and the 6-bit model is ~44% larger than the 4-bit.
On the GPU, single token prediction is ~6% lower than Q4_0,
batch mode (perplexity) is even closer (but still slower).
* Adding Q5_K - scalar, AVX2, CUDA
Performance is ~20% lower compared to Q4_K on the CPU.
This is to be expected, considering that we are memory bound
on the CPU and the 5-bit model is ~22% larger than the 4-bit.
On the GPU, single token prediction is about the same as Q4_0
for both, single token and batch prediction.
* Per convention, all QX_K quantizations use Q5_K for output.weight
* Adding quantization mixes
* Quantization mixes: didn't quite get what I wanted in the last commit
* Q4_K dot product for ARM_NEON
* Q6_K dot product for ARM_NEON
* Q5_K dot product for ARM_NEON
* Adding Q3_K dot for ARM_NEON
It is 22% slower than Q4_K, despite the smaller model size.
On x86_64, where we are memory bound, the Q3_K model is
quite a bit faster than Q4_K.
* A very slightly faster ARM_NEON Q3_K dot
* Adding Q2_K - just CUDA for now
Token prediction is pretty good - about 15.5 ms on a RTX 4080.
Perplexity is about the same as Q4_K.
* Adding scalar and AVX2 Q2_K dot
* Adding ARM_NEON Q2_K dot
About the same performance as Q4_K.
* A slightly faster ARM_NEON Q2_K dot
Single token prediction is now ~36 ms on M2 Max.
The code is much simpler too.
* Fixed bug in Q2_K CUDA dot product kernel
Stranegly enough, for the few prompts I tried with the 7B model
the responses looked perfectly reasonable. Only realized something
is not quite right when I tried the larger models and started getting
nonse back.
In any case, Q2_K single token evaluation time on an RTX 4080 in a Ryzen7950X
box iusing CUDA and model fully loaded on the GPU are
~15.5 ms for 7B, ~25.4 ms for 13B, and ~55.8 ms for 30B.
The max number of layers that fit in VRAM for The 65B is 32.
With that, we get ~330 ms per token, which is not that much faster
than just running on the CPU (~470 ms per token).
* Don't print zeros/NaNs when no count histogram has been collected
* A 10% faster CUDA vector dot kernel for Q3_K
Q3_K is now running at ~18.5 ms / token on CUDA,
so the gap to Q4_0 is only 10%.
It seems memory acccess pattern is more important for
performance than the amount of computation the kernel
does.
* A slightly daster Q4_K AVX2 dot product
For perplexity, where we are less memory bound, time per
pass drops by ~5%. Barely measurable difference for single
token prediction.
* A slightly faster ARM_NEON A4_K dot product
* Minor
* Fix quantization error test
We cannot possibly be expecting rmse < 0.002 for 2- and 3-bit
quantization variants.
* Fix docker build
I have been sloppy with vector reinterpret casts on ARM_NEON.
It seems clang is very forgiving in that regard.
* Added forgotten ggml.o dependence on k_quants.h to the Makefile
* Had unintentionally committed the Makefile with -Ofast enabled
* ggml : rename k_quants -> ggml-quants-k, use lowercase in code
---------
Co-authored-by: Iwan Kawrakow <iwan.kawrakow@gmail.com>
Co-authored-by: Georgi Gerganov <ggerganov@gmail.com>
2023-06-05 21:56:18 +02:00
|
|
|
//================================== k-quants
|
|
|
|
|
|
|
|
static __global__ void dequantize_block_q2_k(const void * vx, float * yy) {
|
|
|
|
|
|
|
|
const int i = blockIdx.x;
|
|
|
|
const int tid = threadIdx.x;
|
|
|
|
const int n = tid/32;
|
|
|
|
const int l = tid - 32*n;
|
|
|
|
const int is = 8*n + l/16;
|
|
|
|
|
|
|
|
const block_q2_k * x = (const block_q2_k *) vx;
|
|
|
|
|
|
|
|
const uint8_t q = x[i].qs[32*n + l];
|
|
|
|
float * y = yy + i*QK_K + 128*n;
|
|
|
|
|
|
|
|
float dall = x[i].d;
|
|
|
|
float dmin = x[i].dmin;
|
|
|
|
y[l+ 0] = dall * (x[i].scales[is+0] & 0xF) * ((q >> 0) & 3) - dmin * (x[i].scales[is+0] >> 4);
|
|
|
|
y[l+32] = dall * (x[i].scales[is+2] & 0xF) * ((q >> 2) & 3) - dmin * (x[i].scales[is+2] >> 4);
|
|
|
|
y[l+64] = dall * (x[i].scales[is+4] & 0xF) * ((q >> 4) & 3) - dmin * (x[i].scales[is+4] >> 4);
|
|
|
|
y[l+96] = dall * (x[i].scales[is+6] & 0xF) * ((q >> 6) & 3) - dmin * (x[i].scales[is+6] >> 4);
|
|
|
|
|
|
|
|
}
|
|
|
|
|
|
|
|
static __device__ void vec_dot_q2_k(const void * vx, const int ib, const int iqs, const float * yy, float & result) {
|
|
|
|
|
|
|
|
const block_q2_k * x = (const block_q2_k *) vx;
|
|
|
|
|
|
|
|
// if n is 0, we want to do the lower 128, else the upper 128,
|
|
|
|
// covering y[l+0], y[l+32], y[l+64], y[l+96] and
|
|
|
|
// y[l+16], y[l+48], y[l+80], y[l+112]
|
|
|
|
int n = iqs/128; // 0 or 1
|
|
|
|
int r = iqs - 128*n; // 0...120 in steps of 8
|
|
|
|
int l = r/8; // 0...15 in steps of 1
|
|
|
|
|
|
|
|
const float * y = yy + 128*n + l;
|
|
|
|
const uint8_t * q = x[ib].qs + 32*n + l;
|
|
|
|
const uint8_t * s = x[ib].scales + 8*n;
|
|
|
|
|
|
|
|
const float dall = x[ib].d;
|
|
|
|
const float dmin = x[ib].dmin;
|
|
|
|
|
|
|
|
float sum = y[ 0] * (dall * ((s[0] & 0xF) * ((q[ 0] >> 0) & 3)) - dmin * (s[0] >> 4))
|
|
|
|
+ y[ 32] * (dall * ((s[2] & 0xF) * ((q[ 0] >> 2) & 3)) - dmin * (s[2] >> 4))
|
|
|
|
+ y[ 64] * (dall * ((s[4] & 0xF) * ((q[ 0] >> 4) & 3)) - dmin * (s[4] >> 4))
|
|
|
|
+ y[ 96] * (dall * ((s[6] & 0xF) * ((q[ 0] >> 6) & 3)) - dmin * (s[6] >> 4))
|
|
|
|
+ y[ 16] * (dall * ((s[1] & 0xF) * ((q[16] >> 0) & 3)) - dmin * (s[1] >> 4))
|
|
|
|
+ y[ 48] * (dall * ((s[3] & 0xF) * ((q[16] >> 2) & 3)) - dmin * (s[3] >> 4))
|
|
|
|
+ y[ 80] * (dall * ((s[5] & 0xF) * ((q[16] >> 4) & 3)) - dmin * (s[5] >> 4))
|
|
|
|
+ y[112] * (dall * ((s[7] & 0xF) * ((q[16] >> 6) & 3)) - dmin * (s[7] >> 4));
|
|
|
|
|
|
|
|
result = sum;
|
|
|
|
|
|
|
|
}
|
|
|
|
|
|
|
|
static __global__ void dequantize_block_q3_k(const void * vx, float * yy) {
|
|
|
|
|
|
|
|
int r = threadIdx.x/4;
|
|
|
|
int i = blockIdx.x;
|
|
|
|
int tid = r/2;
|
|
|
|
int is0 = r%2;
|
|
|
|
int l0 = 16*is0 + 4*(threadIdx.x%4);
|
|
|
|
int n = tid / 4;
|
|
|
|
int j = tid - 4*n;
|
|
|
|
|
|
|
|
const block_q3_k * x = (const block_q3_k *) vx;
|
|
|
|
|
|
|
|
uint8_t m = 1 << (4*n + j);
|
|
|
|
int is = 8*n + 2*j + is0;
|
|
|
|
int shift = 2*j;
|
|
|
|
|
|
|
|
int8_t us = is < 4 ? (x[i].scales[is-0] & 0xF) | (((x[i].scales[is+8] >> 0) & 3) << 4) :
|
|
|
|
is < 8 ? (x[i].scales[is-0] & 0xF) | (((x[i].scales[is+4] >> 2) & 3) << 4) :
|
|
|
|
is < 12 ? (x[i].scales[is-8] >> 4) | (((x[i].scales[is+0] >> 4) & 3) << 4) :
|
|
|
|
(x[i].scales[is-8] >> 4) | (((x[i].scales[is-4] >> 6) & 3) << 4);
|
|
|
|
float d_all = x[i].d;
|
|
|
|
float dl = d_all * (us - 32);
|
|
|
|
|
|
|
|
float * y = yy + i*QK_K + 128*n + 32*j;
|
|
|
|
const uint8_t * q = x[i].qs + 32*n;
|
|
|
|
const uint8_t * hm = x[i].hmask;
|
|
|
|
|
|
|
|
for (int l = l0; l < l0+4; ++l) y[l] = dl * ((int8_t)((q[l] >> shift) & 3) - ((hm[l] & m) ? 0 : 4));
|
|
|
|
|
|
|
|
}
|
|
|
|
|
|
|
|
static __device__ void vec_dot_q3_k(const void * vx, const int ib, const int iqs, const float * yy, float & result) {
|
|
|
|
|
|
|
|
const block_q3_k * x = (const block_q3_k *) vx;
|
|
|
|
|
|
|
|
const uint32_t kmask1 = 0x03030303;
|
|
|
|
const uint32_t kmask2 = 0x0f0f0f0f;
|
|
|
|
|
|
|
|
uint32_t aux[3];
|
|
|
|
uint32_t utmp[4];
|
|
|
|
|
|
|
|
// if n is 0, we want to do the lower 128, else the upper 128,
|
|
|
|
// covering y[l+0], y[l+32], y[l+64], y[l+96] and
|
|
|
|
// y[l+16], y[l+48], y[l+80], y[l+112]
|
|
|
|
int n = iqs/128; // 0 or 1
|
|
|
|
int r = iqs - 128*n; // 0...120 in steps of 8
|
|
|
|
int l = r/8; // 0...15 in steps of 1
|
|
|
|
|
|
|
|
const float * y = yy + 128*n + l;
|
|
|
|
const uint8_t * q = x[ib].qs + 32*n + l;
|
|
|
|
const uint8_t * hm = x[ib].hmask + l;
|
|
|
|
const int8_t * s = (const int8_t *)utmp + 8*n;
|
|
|
|
|
|
|
|
memcpy(aux, x[ib].scales, 12);
|
|
|
|
utmp[3] = ((aux[1] >> 4) & kmask2) | (((aux[2] >> 6) & kmask1) << 4);
|
|
|
|
utmp[2] = ((aux[0] >> 4) & kmask2) | (((aux[2] >> 4) & kmask1) << 4);
|
|
|
|
utmp[1] = (aux[1] & kmask2) | (((aux[2] >> 2) & kmask1) << 4);
|
|
|
|
utmp[0] = (aux[0] & kmask2) | (((aux[2] >> 0) & kmask1) << 4);
|
|
|
|
|
|
|
|
const float dall = x[ib].d;
|
|
|
|
|
|
|
|
const uint8_t m = 1 << (4*n);
|
|
|
|
|
|
|
|
float sum = y[ 0] * (s[0] - 32) * (((q[ 0] >> 0) & 3) - (hm[ 0] & (m << 0) ? 0 : 4))
|
|
|
|
+ y[ 32] * (s[2] - 32) * (((q[ 0] >> 2) & 3) - (hm[ 0] & (m << 1) ? 0 : 4))
|
|
|
|
+ y[ 64] * (s[4] - 32) * (((q[ 0] >> 4) & 3) - (hm[ 0] & (m << 2) ? 0 : 4))
|
|
|
|
+ y[ 96] * (s[6] - 32) * (((q[ 0] >> 6) & 3) - (hm[ 0] & (m << 3) ? 0 : 4))
|
|
|
|
+ y[ 16] * (s[1] - 32) * (((q[16] >> 0) & 3) - (hm[16] & (m << 0) ? 0 : 4))
|
|
|
|
+ y[ 48] * (s[3] - 32) * (((q[16] >> 2) & 3) - (hm[16] & (m << 1) ? 0 : 4))
|
|
|
|
+ y[ 80] * (s[5] - 32) * (((q[16] >> 4) & 3) - (hm[16] & (m << 2) ? 0 : 4))
|
|
|
|
+ y[112] * (s[7] - 32) * (((q[16] >> 6) & 3) - (hm[16] & (m << 3) ? 0 : 4));
|
|
|
|
|
|
|
|
result = sum * dall;
|
|
|
|
|
|
|
|
}
|
|
|
|
|
|
|
|
static inline __device__ void get_scale_min_k4(int j, const uint8_t * q, uint8_t & d, uint8_t & m) {
|
|
|
|
if (j < 4) {
|
|
|
|
d = q[j] & 63; m = q[j + 4] & 63;
|
|
|
|
} else {
|
|
|
|
d = (q[j+4] & 0xF) | ((q[j-4] >> 6) << 4);
|
|
|
|
m = (q[j+4] >> 4) | ((q[j-0] >> 6) << 4);
|
|
|
|
}
|
|
|
|
}
|
|
|
|
|
|
|
|
static __global__ void dequantize_block_q4_k(const void * vx, float * yy) {
|
|
|
|
const block_q4_k * x = (const block_q4_k *) vx;
|
|
|
|
|
|
|
|
const int i = blockIdx.x;
|
|
|
|
|
|
|
|
//// assume 64 threads - this is very slightly better than the one below
|
|
|
|
//const int tid = threadIdx.x;
|
|
|
|
//const int il = tid/16;
|
|
|
|
//const int ir = tid%16;
|
|
|
|
//const int is = 2*il;
|
|
|
|
//const int n = 2;
|
|
|
|
|
|
|
|
// assume 32 threads
|
|
|
|
const int tid = threadIdx.x;
|
|
|
|
const int il = tid/8;
|
|
|
|
const int ir = tid%8;
|
|
|
|
const int is = 2*il;
|
|
|
|
const int n = 4;
|
|
|
|
|
|
|
|
float * y = yy + i*QK_K + 64*il + n*ir;
|
|
|
|
|
|
|
|
const float dall = x[i].d;
|
|
|
|
const float dmin = x[i].dmin;
|
|
|
|
|
|
|
|
const uint8_t * q = x[i].qs + 32*il + n*ir;
|
|
|
|
|
|
|
|
uint8_t sc, m;
|
|
|
|
get_scale_min_k4(is + 0, x[i].scales, sc, m);
|
|
|
|
const float d1 = dall * sc; const float m1 = dmin * m;
|
|
|
|
get_scale_min_k4(is + 1, x[i].scales, sc, m);
|
|
|
|
const float d2 = dall * sc; const float m2 = dmin * m;
|
|
|
|
for (int l = 0; l < n; ++l) {
|
|
|
|
y[l + 0] = d1 * (q[l] & 0xF) - m1;
|
|
|
|
y[l +32] = d2 * (q[l] >> 4) - m2;
|
|
|
|
}
|
|
|
|
}
|
|
|
|
|
|
|
|
static __device__ void vec_dot_q4_k(const void * vx, const int ib, const int iqs, const float * yy, float & result) {
|
|
|
|
|
|
|
|
const block_q4_k * x = (const block_q4_k *) vx;
|
|
|
|
|
|
|
|
// iqs is in 0...248 in steps of 8 =>
|
|
|
|
const int j = iqs / 64; // j is in 0...3
|
|
|
|
const int ir = (iqs - 64*j)/2; // ir is in 0...28 in steps of 4
|
|
|
|
const int is = 2*j; // is is in 0...6 in steps of 2
|
|
|
|
|
|
|
|
const float * y = yy + 64*j + ir;
|
|
|
|
const uint8_t * q = x[ib].qs + 32*j + ir;
|
|
|
|
|
|
|
|
const float dall = x[ib].d;
|
|
|
|
const float dmin = x[ib].dmin;
|
|
|
|
|
|
|
|
uint8_t sc, m;
|
|
|
|
get_scale_min_k4(is + 0, x[ib].scales, sc, m);
|
|
|
|
const float d1 = dall * sc;
|
|
|
|
const float m1 = dmin * m;
|
|
|
|
get_scale_min_k4(is + 1, x[ib].scales, sc, m);
|
|
|
|
const float d2 = dall * sc;
|
|
|
|
const float m2 = dmin * m;
|
|
|
|
|
|
|
|
float sum = 0;
|
|
|
|
for (int k = 0; k < 4; ++k) {
|
|
|
|
sum += y[k + 0] * (d1 * (q[k] & 0xF) - m1);
|
|
|
|
sum += y[k + 32] * (d2 * (q[k] >> 4) - m2);
|
|
|
|
}
|
|
|
|
result = sum;
|
|
|
|
|
|
|
|
}
|
|
|
|
|
|
|
|
static __global__ void dequantize_block_q5_k(const void * vx, float * yy) {
|
|
|
|
const block_q5_k * x = (const block_q5_k *) vx;
|
|
|
|
|
|
|
|
const int i = blockIdx.x;
|
|
|
|
|
|
|
|
// assume 64 threads - this is very slightly better than the one below
|
|
|
|
const int tid = threadIdx.x;
|
|
|
|
const int il = tid/16; // il is in 0...3
|
|
|
|
const int ir = tid%16; // ir is in 0...15
|
|
|
|
const int is = 2*il; // is is in 0...6
|
|
|
|
|
|
|
|
float * y = yy + i*QK_K + 64*il + 2*ir;
|
|
|
|
|
|
|
|
const float dall = x[i].d;
|
|
|
|
const float dmin = x[i].dmin;
|
|
|
|
|
|
|
|
const uint8_t * ql = x[i].qs + 32*il + 2*ir;
|
|
|
|
const uint8_t * qh = x[i].qh + 2*ir;
|
|
|
|
|
|
|
|
uint8_t sc, m;
|
|
|
|
get_scale_min_k4(is + 0, x[i].scales, sc, m);
|
|
|
|
const float d1 = dall * sc; const float m1 = dmin * m;
|
|
|
|
get_scale_min_k4(is + 1, x[i].scales, sc, m);
|
|
|
|
const float d2 = dall * sc; const float m2 = dmin * m;
|
|
|
|
|
|
|
|
uint8_t hm = 1 << (2*il);
|
|
|
|
y[ 0] = d1 * ((ql[ 0] & 0xF) + (qh[ 0] & hm ? 16 : 0)) - m1;
|
|
|
|
y[ 1] = d1 * ((ql[ 1] & 0xF) + (qh[ 1] & hm ? 16 : 0)) - m1;
|
|
|
|
hm <<= 1;
|
|
|
|
y[32] = d2 * ((ql[ 0] >> 4) + (qh[ 0] & hm ? 16 : 0)) - m2;
|
|
|
|
y[33] = d2 * ((ql[ 1] >> 4) + (qh[ 1] & hm ? 16 : 0)) - m2;
|
|
|
|
}
|
|
|
|
|
|
|
|
static __device__ void vec_dot_q5_k(const void * vx, const int ib, const int iqs, const float * yy, float & result) {
|
|
|
|
|
|
|
|
const block_q5_k * x = (const block_q5_k *) vx;
|
|
|
|
|
|
|
|
// iqs is in 0...248 in steps of 8 =>
|
|
|
|
const int j = iqs / 64; // j is in 0...3
|
|
|
|
const int ir = (iqs - 64*j)/2; // ir is in 0...28 in steps of 4
|
|
|
|
const int is = 2*j; // is is in 0...6 in steps of 2
|
|
|
|
|
|
|
|
const float * y = yy + 64*j + ir;
|
|
|
|
const uint8_t * ql = x[ib].qs + 32*j + ir;
|
|
|
|
const uint8_t * qh = x[ib].qh + ir;
|
|
|
|
|
|
|
|
const float dall = x[ib].d;
|
|
|
|
const float dmin = x[ib].dmin;
|
|
|
|
|
|
|
|
uint8_t sc, m;
|
|
|
|
get_scale_min_k4(is + 0, x[ib].scales, sc, m);
|
|
|
|
const float d1 = dall * sc;
|
|
|
|
const float m1 = dmin * m;
|
|
|
|
get_scale_min_k4(is + 1, x[ib].scales, sc, m);
|
|
|
|
const float d2 = dall * sc;
|
|
|
|
const float m2 = dmin * m;
|
|
|
|
|
|
|
|
uint8_t hm = 1 << is;
|
|
|
|
float sum = 0;
|
|
|
|
for (int k = 0; k < 4; ++k) {
|
|
|
|
sum += y[k + 0] * (d1 * ((ql[k] & 0xF) + (qh[k] & hm ? 16 : 0)) - m1);
|
|
|
|
}
|
|
|
|
hm <<= 1;
|
|
|
|
for (int k = 0; k < 4; ++k) {
|
|
|
|
sum += y[k + 32] * (d2 * ((ql[k] >> 4) + (qh[k] & hm ? 16 : 0)) - m2);
|
|
|
|
}
|
|
|
|
result = sum;
|
|
|
|
|
|
|
|
}
|
|
|
|
|
|
|
|
static __global__ void dequantize_block_q6_k(const void * vx, float * yy) {
|
|
|
|
const block_q6_k * x = (const block_q6_k *) vx;
|
|
|
|
|
|
|
|
const int i = blockIdx.x;
|
|
|
|
|
|
|
|
// assume 64 threads - this is very slightly better than the one below
|
|
|
|
const int tid = threadIdx.x;
|
|
|
|
const int ip = tid/32; // ip is 0 or 1
|
|
|
|
const int il = tid - 32*ip; // 0...32
|
|
|
|
const int is = 8*ip + il/16;
|
|
|
|
|
|
|
|
float * y = yy + i*QK_K + 128*ip + il;
|
|
|
|
|
|
|
|
const float d = x[i].d;
|
|
|
|
|
|
|
|
const uint8_t * ql = x[i].ql + 64*ip + il;
|
|
|
|
const uint8_t qh = x[i].qh[32*ip + il];
|
|
|
|
const int8_t * sc = x[i].scales + is;
|
|
|
|
|
|
|
|
y[ 0] = d * sc[0] * ((int8_t)((ql[ 0] & 0xF) | (((qh >> 0) & 3) << 4)) - 32);
|
|
|
|
y[32] = d * sc[2] * ((int8_t)((ql[32] & 0xF) | (((qh >> 2) & 3) << 4)) - 32);
|
|
|
|
y[64] = d * sc[4] * ((int8_t)((ql[ 0] >> 4) | (((qh >> 4) & 3) << 4)) - 32);
|
|
|
|
y[96] = d * sc[6] * ((int8_t)((ql[32] >> 4) | (((qh >> 6) & 3) << 4)) - 32);
|
|
|
|
}
|
|
|
|
|
|
|
|
static __device__ void vec_dot_q6_k(const void * vx, const int ib, const int iqs, const float * yy, float & result) {
|
|
|
|
|
|
|
|
const block_q6_k * x = (const block_q6_k *) vx;
|
|
|
|
|
|
|
|
const int ip = iqs / 128; // 0 or 1
|
|
|
|
const int il = (iqs - 128*ip)/8; // 0...15
|
|
|
|
const int is = 8*ip;
|
|
|
|
|
|
|
|
const float * y = yy + 128*ip + il;
|
|
|
|
|
|
|
|
const float d = x[ib].d;
|
|
|
|
|
|
|
|
const uint8_t * ql = x[ib].ql + 64*ip + il;
|
|
|
|
const uint8_t * qh = x[ib].qh + 32*ip + il;
|
|
|
|
const int8_t * sc = x[ib].scales + is;
|
|
|
|
|
|
|
|
result = y[ 0] * d * sc[0] * ((int8_t)((ql[ 0] & 0xF) | (((qh[ 0] >> 0) & 3) << 4)) - 32)
|
|
|
|
+ y[ 32] * d * sc[2] * ((int8_t)((ql[32] & 0xF) | (((qh[ 0] >> 2) & 3) << 4)) - 32)
|
|
|
|
+ y[ 64] * d * sc[4] * ((int8_t)((ql[ 0] >> 4) | (((qh[ 0] >> 4) & 3) << 4)) - 32)
|
|
|
|
+ y[ 96] * d * sc[6] * ((int8_t)((ql[32] >> 4) | (((qh[ 0] >> 6) & 3) << 4)) - 32)
|
|
|
|
+ y[ 16] * d * sc[1] * ((int8_t)((ql[16] & 0xF) | (((qh[16] >> 0) & 3) << 4)) - 32)
|
|
|
|
+ y[ 48] * d * sc[3] * ((int8_t)((ql[48] & 0xF) | (((qh[16] >> 2) & 3) << 4)) - 32)
|
|
|
|
+ y[ 80] * d * sc[5] * ((int8_t)((ql[16] >> 4) | (((qh[16] >> 4) & 3) << 4)) - 32)
|
|
|
|
+ y[112] * d * sc[7] * ((int8_t)((ql[48] >> 4) | (((qh[16] >> 6) & 3) << 4)) - 32);
|
|
|
|
|
|
|
|
}
|
|
|
|
|
2023-05-13 15:38:36 +02:00
|
|
|
static __device__ void convert_f16(const void * vx, const int ib, const int iqs, float & v0, float & v1){
|
|
|
|
const half * x = (const half *) vx;
|
|
|
|
|
|
|
|
v0 = __half2float(x[ib + 0]);
|
|
|
|
v1 = __half2float(x[ib + 1]);
|
|
|
|
}
|
|
|
|
|
2023-05-14 20:53:23 +02:00
|
|
|
template <int qk, int qr, dequantize_kernel_t dequantize_kernel>
|
|
|
|
static __global__ void dequantize_block(const void * vx, float * y, const int k) {
|
|
|
|
const int i = blockDim.x*blockIdx.x + 2*threadIdx.x;
|
2023-05-11 23:23:08 +02:00
|
|
|
|
2023-05-14 20:53:23 +02:00
|
|
|
if (i >= k) {
|
|
|
|
return;
|
2023-04-26 22:14:13 +02:00
|
|
|
}
|
|
|
|
|
2023-05-14 20:53:23 +02:00
|
|
|
const int ib = i/qk; // block index
|
|
|
|
const int iqs = (i%qk)/qr; // quant index
|
|
|
|
const int iybs = i - i%qk; // y block start index
|
|
|
|
const int y_offset = qr == 1 ? 1 : qk/2;
|
2023-04-25 22:40:51 +02:00
|
|
|
|
2023-05-14 20:53:23 +02:00
|
|
|
// dequantize
|
|
|
|
float & v0 = y[iybs + iqs + 0];
|
|
|
|
float & v1 = y[iybs + iqs + y_offset];
|
|
|
|
dequantize_kernel(vx, ib, iqs, v0, v1);
|
2023-04-25 22:40:51 +02:00
|
|
|
}
|
|
|
|
|
2023-05-25 23:07:29 +02:00
|
|
|
template <int qk, int qr, dequantize_kernel_t dequantize_kernel>
|
2023-05-13 15:38:36 +02:00
|
|
|
static __global__ void dequantize_mul_mat_vec(const void * vx, const float * y, float * dst, const int ncols) {
|
2023-05-25 23:07:29 +02:00
|
|
|
// qk = quantized weights per x block
|
|
|
|
// qr = number of quantized weights per data value in x block
|
|
|
|
const int row = blockIdx.x*blockDim.y + threadIdx.y;
|
2023-05-13 15:38:36 +02:00
|
|
|
const int tid = threadIdx.x;
|
|
|
|
|
2023-05-25 23:07:29 +02:00
|
|
|
const int iter_stride = 2*GGML_CUDA_DMMV_X;
|
|
|
|
const int vals_per_iter = iter_stride / WARP_SIZE; // num quantized vals per thread and i iter
|
2023-05-13 15:38:36 +02:00
|
|
|
const int y_offset = qr == 1 ? 1 : qk/2;
|
|
|
|
|
2023-05-25 23:07:29 +02:00
|
|
|
float tmp = 0; // partial sum for thread in warp
|
2023-05-13 15:38:36 +02:00
|
|
|
|
2023-05-25 23:07:29 +02:00
|
|
|
for (int i = 0; i < ncols; i += iter_stride) {
|
|
|
|
const int col = i + vals_per_iter*tid;
|
|
|
|
const int ib = (row*ncols + col)/qk; // x block index
|
|
|
|
const int iqs = (col%qk)/qr; // x quant index
|
2023-05-13 15:38:36 +02:00
|
|
|
const int iybs = col - col%qk; // y block start index
|
|
|
|
|
2023-05-25 23:07:29 +02:00
|
|
|
// processing >2 values per i iter is faster for fast GPUs
|
|
|
|
#pragma unroll
|
|
|
|
for (int j = 0; j < vals_per_iter; j += 2) {
|
|
|
|
// process 2 vals per j iter
|
2023-05-13 15:38:36 +02:00
|
|
|
|
2023-05-25 23:07:29 +02:00
|
|
|
// dequantize
|
|
|
|
float v0, v1;
|
|
|
|
dequantize_kernel(vx, ib, iqs + j/qr, v0, v1);
|
|
|
|
// for qr = 2 the iqs needs to increase by 1 per j iter because 2 weights per data val
|
|
|
|
|
|
|
|
// matrix multiplication
|
|
|
|
tmp += v0 * y[iybs + iqs + j/qr + 0];
|
|
|
|
tmp += v1 * y[iybs + iqs + j/qr + y_offset];
|
|
|
|
// for qr = 2 the y index needs to increase by 1 per j iter because of y_offset = qk/2
|
|
|
|
}
|
2023-05-13 15:38:36 +02:00
|
|
|
}
|
|
|
|
|
|
|
|
// sum up partial sums and write back result
|
|
|
|
__syncthreads();
|
2023-05-25 23:07:29 +02:00
|
|
|
#pragma unroll
|
|
|
|
for (int mask = 16; mask > 0; mask >>= 1) {
|
|
|
|
tmp += __shfl_xor_sync(0xffffffff, tmp, mask, 32);
|
2023-05-13 15:38:36 +02:00
|
|
|
}
|
2023-05-25 23:07:29 +02:00
|
|
|
|
2023-05-13 15:38:36 +02:00
|
|
|
if (tid == 0) {
|
2023-05-25 23:07:29 +02:00
|
|
|
dst[row] = tmp;
|
2023-05-13 15:38:36 +02:00
|
|
|
}
|
|
|
|
}
|
|
|
|
|
ggml : add SOTA 2,3,4,5,6 bit k-quantizations (#1684)
* Starting to add k-quantization to ggml
I think it is better to have quantization separate from
ggml. For now just adding the k-quants there, but it would be
better to also factor out the existing ggml quantizations.
* Adding Q3_K and Q8_K (de)-quantization
* Q3_K now working on CUDA and AVX2/scalar
CUDA is not ideal - ~50% slower than Q4_0 for
single token prediction, about the same in batch
mode (perplexity). CPU single token is ~55 ms
(on Ryzen 7950X).
* Some improvement for Q3_K on CUDA
It is now ~22.5 ms/token on my GPU, so ~30% slower than Q4_0.
* Some more CUDA optimizations for Q3_K
Single token is now 20.5 ms/token (~20% slower than Q4_0).
Perplexity is on par with Q4_0.
* Adding Q4_K - scalar, AVX2, CUDA
Performance is the same or perhaps very slightly better than Q4_0 on the CPU.
On the GPU, single token prediction is ~10% better than Q4_0,
batch mode (perplexity is about the same).
* Adding Q6_K - scalar, AVX2, CUDA
Performance is ~40% lower compared to Q4_K on the CPU.
This is to be expected, considering that we are memory bound
on the CPU and the 6-bit model is ~44% larger than the 4-bit.
On the GPU, single token prediction is ~6% lower than Q4_0,
batch mode (perplexity) is even closer (but still slower).
* Adding Q5_K - scalar, AVX2, CUDA
Performance is ~20% lower compared to Q4_K on the CPU.
This is to be expected, considering that we are memory bound
on the CPU and the 5-bit model is ~22% larger than the 4-bit.
On the GPU, single token prediction is about the same as Q4_0
for both, single token and batch prediction.
* Per convention, all QX_K quantizations use Q5_K for output.weight
* Adding quantization mixes
* Quantization mixes: didn't quite get what I wanted in the last commit
* Q4_K dot product for ARM_NEON
* Q6_K dot product for ARM_NEON
* Q5_K dot product for ARM_NEON
* Adding Q3_K dot for ARM_NEON
It is 22% slower than Q4_K, despite the smaller model size.
On x86_64, where we are memory bound, the Q3_K model is
quite a bit faster than Q4_K.
* A very slightly faster ARM_NEON Q3_K dot
* Adding Q2_K - just CUDA for now
Token prediction is pretty good - about 15.5 ms on a RTX 4080.
Perplexity is about the same as Q4_K.
* Adding scalar and AVX2 Q2_K dot
* Adding ARM_NEON Q2_K dot
About the same performance as Q4_K.
* A slightly faster ARM_NEON Q2_K dot
Single token prediction is now ~36 ms on M2 Max.
The code is much simpler too.
* Fixed bug in Q2_K CUDA dot product kernel
Stranegly enough, for the few prompts I tried with the 7B model
the responses looked perfectly reasonable. Only realized something
is not quite right when I tried the larger models and started getting
nonse back.
In any case, Q2_K single token evaluation time on an RTX 4080 in a Ryzen7950X
box iusing CUDA and model fully loaded on the GPU are
~15.5 ms for 7B, ~25.4 ms for 13B, and ~55.8 ms for 30B.
The max number of layers that fit in VRAM for The 65B is 32.
With that, we get ~330 ms per token, which is not that much faster
than just running on the CPU (~470 ms per token).
* Don't print zeros/NaNs when no count histogram has been collected
* A 10% faster CUDA vector dot kernel for Q3_K
Q3_K is now running at ~18.5 ms / token on CUDA,
so the gap to Q4_0 is only 10%.
It seems memory acccess pattern is more important for
performance than the amount of computation the kernel
does.
* A slightly daster Q4_K AVX2 dot product
For perplexity, where we are less memory bound, time per
pass drops by ~5%. Barely measurable difference for single
token prediction.
* A slightly faster ARM_NEON A4_K dot product
* Minor
* Fix quantization error test
We cannot possibly be expecting rmse < 0.002 for 2- and 3-bit
quantization variants.
* Fix docker build
I have been sloppy with vector reinterpret casts on ARM_NEON.
It seems clang is very forgiving in that regard.
* Added forgotten ggml.o dependence on k_quants.h to the Makefile
* Had unintentionally committed the Makefile with -Ofast enabled
* ggml : rename k_quants -> ggml-quants-k, use lowercase in code
---------
Co-authored-by: Iwan Kawrakow <iwan.kawrakow@gmail.com>
Co-authored-by: Georgi Gerganov <ggerganov@gmail.com>
2023-06-05 21:56:18 +02:00
|
|
|
template <int n_thread, dot_kernel_k_t dot_kernel>
|
|
|
|
static __global__ void dequantize_mul_mat_vec_k(const void * vx, const float * y, float * dst, const int ncols) {
|
|
|
|
const int row = blockIdx.x*blockDim.y + threadIdx.y;
|
|
|
|
const int tid = threadIdx.x;
|
|
|
|
|
|
|
|
const int iter_stride = QK_K;
|
|
|
|
const int vals_per_iter = iter_stride / n_thread;
|
|
|
|
const int num_blocks_per_row = ncols / QK_K;
|
|
|
|
const int ib0 = row*num_blocks_per_row;
|
|
|
|
|
|
|
|
float tmp = 0; // partial sum for thread in warp
|
|
|
|
|
|
|
|
for (int i = 0; i < ncols; i += iter_stride) {
|
|
|
|
const int col = i + vals_per_iter*tid;
|
|
|
|
const int ib = ib0 + col/QK_K; // x block index
|
|
|
|
const int iqs = col%QK_K; // x quant index
|
|
|
|
const int iybs = col - col%QK_K; // y block start index
|
|
|
|
|
|
|
|
float v;
|
|
|
|
dot_kernel(vx, ib, iqs, y + iybs, v);
|
|
|
|
tmp += v;
|
|
|
|
}
|
|
|
|
|
|
|
|
// sum up partial sums and write back result
|
|
|
|
__syncthreads();
|
|
|
|
#pragma unroll
|
|
|
|
for (int mask = 16; mask > 0; mask >>= 1) {
|
|
|
|
tmp += __shfl_xor_sync(0xffffffff, tmp, mask, 32);
|
|
|
|
}
|
|
|
|
|
|
|
|
if (tid == 0) {
|
|
|
|
dst[row] = tmp;
|
|
|
|
}
|
|
|
|
}
|
|
|
|
|
cuda : loading models directly into VRAM, norm calculation on GPU, broadcasting for ggml_mul (#1483)
* Broadcasting for ggml_mul
* CUDA kernel for ggml_mul, norms in VRAM
* GPU weights not in RAM, direct loading with cuFile
* fixup! GPU weights not in RAM, direct loading with cuFile
* fixup! GPU weights not in RAM, direct loading with cuFile
* define default model path once, sync path with readme (#1366)
* ~7% faster Q5_1 AVX2 code (#1477)
* convert.py: Support models which are stored in a single pytorch_model.bin (#1469)
* Support models in a single pytorch_model.bin
* Remove spurious line with typo
* benchmark-matmul: Print the average of the test results (#1490)
* Remove unused n_parts parameter (#1509)
* Fixes #1511 lambda issue for w64devkit (mingw) (#1513)
* Fix for w64devkit and mingw
* make kv_f16 the default for api users (#1517)
* minor : fix compile warnings
* readme : adds WizardLM to the list of supported models (#1485)
* main : make reverse prompt option act as a stop token in non-interactive mode (#1032)
* Make reverse prompt option act as a stop token in non-interactive scenarios
* Making requested review changes
* Update gpt_params_parse and fix a merge error
* Revert "Update gpt_params_parse and fix a merge error"
This reverts commit 2bb2ff1748513591ad45b175a75ed1d8089d84c8.
* Update gpt_params_parse and fix a merge error take 2
* examples : add persistent chat (#1495)
* examples : add persistent chat
* examples : fix whitespace
---------
Co-authored-by: Georgi Gerganov <ggerganov@gmail.com>
* tests : add missing header
* ggml : use F16 instead of F32 in Q4_0, Q4_1, Q8_0 (#1508)
* ggml : use F16 instead of F32 in Q4_0, Q4_1 and Q8_0
* llama : bump LLAMA_FILE_VERSION to 3
* cuda : update Q4 and Q8 dequantize kernels
* ggml : fix AVX dot products
* readme : update performance table + hot topics
* ggml : fix scalar implementation of Q4_1 dot
* llama : fix compile warnings in llama_set_state_data()
* llama : fix name shadowing and C4146 (#1526)
* Fix name shadowing and C4146
* Fix if macros not using defined when required
* Update llama-util.h
Co-authored-by: github-actions[bot] <41898282+github-actions[bot]@users.noreply.github.com>
* Update llama-util.h
Co-authored-by: github-actions[bot] <41898282+github-actions[bot]@users.noreply.github.com>
* Code style
Co-authored-by: Georgi Gerganov <ggerganov@gmail.com>
---------
Co-authored-by: github-actions[bot] <41898282+github-actions[bot]@users.noreply.github.com>
Co-authored-by: Georgi Gerganov <ggerganov@gmail.com>
* Fix for mingw (#1462)
* llama : add llama_init_backend() API (close #1527)
* feature : add blis and other BLAS implementation support (#1502)
* feature: add blis support
* feature: allow all BLA_VENDOR to be assigned in cmake arguments. align with whisper.cpp pr 927
* fix: version detection for BLA_SIZEOF_INTEGER, recover min version of cmake
* Fix typo in INTEGER
Co-authored-by: Georgi Gerganov <ggerganov@gmail.com>
---------
Co-authored-by: Georgi Gerganov <ggerganov@gmail.com>
* Revert "feature : add blis and other BLAS implementation support (#1502)"
This reverts commit 07e9ace0f9da424d82e75df969642522880feb92.
* GPU weights not in RAM, direct loading with cuFile
* llama : code style fixes + progress print fix
* ggml : ggml_mul better broadcast support
* cmake : workarounds for cufile when CMake version < 3.25
* gg rebase fixup
* Loop in llama.cpp, fixed progress callback
* Attempt clang-tidy fix
* llama : fix vram size computation
* Add forgotten fclose()
---------
Co-authored-by: András Salamon <ott2@users.noreply.github.com>
Co-authored-by: Ilya Kurdyukov <59548320+ilyakurdyukov@users.noreply.github.com>
Co-authored-by: Tom Jobbins <784313+TheBloke@users.noreply.github.com>
Co-authored-by: rankaiyx <rankaiyx@rankaiyx.com>
Co-authored-by: Stephan Walter <stephan@walter.name>
Co-authored-by: DannyDaemonic <DannyDaemonic@gmail.com>
Co-authored-by: Erik Scholz <Green-Sky@users.noreply.github.com>
Co-authored-by: Georgi Gerganov <ggerganov@gmail.com>
Co-authored-by: David Kennedy <dakennedyd@gmail.com>
Co-authored-by: Jason McCartney <jmac@theroot.org>
Co-authored-by: Evan Jones <evan.q.jones@gmail.com>
Co-authored-by: Maxime <672982+maximegmd@users.noreply.github.com>
Co-authored-by: github-actions[bot] <41898282+github-actions[bot]@users.noreply.github.com>
Co-authored-by: Zenix <zenixls2@gmail.com>
2023-05-20 14:19:28 +02:00
|
|
|
static void mul_f32_cuda(const float * x, const float * y, float * dst, const int kx, const int ky, cudaStream_t stream) {
|
|
|
|
const int num_blocks = (kx + CUDA_MUL_BLOCK_SIZE - 1) / CUDA_MUL_BLOCK_SIZE;
|
|
|
|
mul_f32<<<num_blocks, CUDA_MUL_BLOCK_SIZE, 0, stream>>>(x, y, dst, kx, ky);
|
|
|
|
}
|
|
|
|
|
2023-05-14 20:53:23 +02:00
|
|
|
static void dequantize_row_q4_0_cuda(const void * vx, float * y, const int k, cudaStream_t stream) {
|
|
|
|
const int num_blocks = (k + CUDA_DEQUANTIZE_BLOCK_SIZE - 1) / CUDA_DEQUANTIZE_BLOCK_SIZE;
|
|
|
|
dequantize_block<QK4_0, QR4_0, dequantize_q4_0><<<num_blocks, CUDA_DEQUANTIZE_BLOCK_SIZE, 0, stream>>>(vx, y, k);
|
2023-04-21 21:59:17 +02:00
|
|
|
}
|
|
|
|
|
2023-05-14 20:53:23 +02:00
|
|
|
static void dequantize_row_q4_1_cuda(const void * vx, float * y, const int k, cudaStream_t stream) {
|
|
|
|
const int num_blocks = (k + CUDA_DEQUANTIZE_BLOCK_SIZE - 1) / CUDA_DEQUANTIZE_BLOCK_SIZE;
|
|
|
|
dequantize_block<QK4_1, QR4_1, dequantize_q4_1><<<num_blocks, CUDA_DEQUANTIZE_BLOCK_SIZE, 0, stream>>>(vx, y, k);
|
2023-04-21 21:59:17 +02:00
|
|
|
}
|
|
|
|
|
2023-05-14 20:53:23 +02:00
|
|
|
static void dequantize_row_q5_0_cuda(const void * vx, float * y, const int k, cudaStream_t stream) {
|
|
|
|
const int num_blocks = (k + CUDA_DEQUANTIZE_BLOCK_SIZE - 1) / CUDA_DEQUANTIZE_BLOCK_SIZE;
|
|
|
|
dequantize_block<QK5_0, QR5_0, dequantize_q5_0><<<num_blocks, CUDA_DEQUANTIZE_BLOCK_SIZE, 0, stream>>>(vx, y, k);
|
2023-04-26 22:14:13 +02:00
|
|
|
}
|
|
|
|
|
2023-05-14 20:53:23 +02:00
|
|
|
static void dequantize_row_q5_1_cuda(const void * vx, float * y, const int k, cudaStream_t stream) {
|
|
|
|
const int num_blocks = (k + CUDA_DEQUANTIZE_BLOCK_SIZE - 1) / CUDA_DEQUANTIZE_BLOCK_SIZE;
|
|
|
|
dequantize_block<QK5_1, QR5_1, dequantize_q5_1><<<num_blocks, CUDA_DEQUANTIZE_BLOCK_SIZE, 0, stream>>>(vx, y, k);
|
2023-04-26 22:14:13 +02:00
|
|
|
}
|
|
|
|
|
2023-05-14 20:53:23 +02:00
|
|
|
static void dequantize_row_q8_0_cuda(const void * vx, float * y, const int k, cudaStream_t stream) {
|
|
|
|
const int num_blocks = (k + CUDA_DEQUANTIZE_BLOCK_SIZE - 1) / CUDA_DEQUANTIZE_BLOCK_SIZE;
|
|
|
|
dequantize_block<QK8_0, QR8_0, dequantize_q8_0><<<num_blocks, CUDA_DEQUANTIZE_BLOCK_SIZE, 0, stream>>>(vx, y, k);
|
2023-04-25 22:40:51 +02:00
|
|
|
}
|
|
|
|
|
ggml : add SOTA 2,3,4,5,6 bit k-quantizations (#1684)
* Starting to add k-quantization to ggml
I think it is better to have quantization separate from
ggml. For now just adding the k-quants there, but it would be
better to also factor out the existing ggml quantizations.
* Adding Q3_K and Q8_K (de)-quantization
* Q3_K now working on CUDA and AVX2/scalar
CUDA is not ideal - ~50% slower than Q4_0 for
single token prediction, about the same in batch
mode (perplexity). CPU single token is ~55 ms
(on Ryzen 7950X).
* Some improvement for Q3_K on CUDA
It is now ~22.5 ms/token on my GPU, so ~30% slower than Q4_0.
* Some more CUDA optimizations for Q3_K
Single token is now 20.5 ms/token (~20% slower than Q4_0).
Perplexity is on par with Q4_0.
* Adding Q4_K - scalar, AVX2, CUDA
Performance is the same or perhaps very slightly better than Q4_0 on the CPU.
On the GPU, single token prediction is ~10% better than Q4_0,
batch mode (perplexity is about the same).
* Adding Q6_K - scalar, AVX2, CUDA
Performance is ~40% lower compared to Q4_K on the CPU.
This is to be expected, considering that we are memory bound
on the CPU and the 6-bit model is ~44% larger than the 4-bit.
On the GPU, single token prediction is ~6% lower than Q4_0,
batch mode (perplexity) is even closer (but still slower).
* Adding Q5_K - scalar, AVX2, CUDA
Performance is ~20% lower compared to Q4_K on the CPU.
This is to be expected, considering that we are memory bound
on the CPU and the 5-bit model is ~22% larger than the 4-bit.
On the GPU, single token prediction is about the same as Q4_0
for both, single token and batch prediction.
* Per convention, all QX_K quantizations use Q5_K for output.weight
* Adding quantization mixes
* Quantization mixes: didn't quite get what I wanted in the last commit
* Q4_K dot product for ARM_NEON
* Q6_K dot product for ARM_NEON
* Q5_K dot product for ARM_NEON
* Adding Q3_K dot for ARM_NEON
It is 22% slower than Q4_K, despite the smaller model size.
On x86_64, where we are memory bound, the Q3_K model is
quite a bit faster than Q4_K.
* A very slightly faster ARM_NEON Q3_K dot
* Adding Q2_K - just CUDA for now
Token prediction is pretty good - about 15.5 ms on a RTX 4080.
Perplexity is about the same as Q4_K.
* Adding scalar and AVX2 Q2_K dot
* Adding ARM_NEON Q2_K dot
About the same performance as Q4_K.
* A slightly faster ARM_NEON Q2_K dot
Single token prediction is now ~36 ms on M2 Max.
The code is much simpler too.
* Fixed bug in Q2_K CUDA dot product kernel
Stranegly enough, for the few prompts I tried with the 7B model
the responses looked perfectly reasonable. Only realized something
is not quite right when I tried the larger models and started getting
nonse back.
In any case, Q2_K single token evaluation time on an RTX 4080 in a Ryzen7950X
box iusing CUDA and model fully loaded on the GPU are
~15.5 ms for 7B, ~25.4 ms for 13B, and ~55.8 ms for 30B.
The max number of layers that fit in VRAM for The 65B is 32.
With that, we get ~330 ms per token, which is not that much faster
than just running on the CPU (~470 ms per token).
* Don't print zeros/NaNs when no count histogram has been collected
* A 10% faster CUDA vector dot kernel for Q3_K
Q3_K is now running at ~18.5 ms / token on CUDA,
so the gap to Q4_0 is only 10%.
It seems memory acccess pattern is more important for
performance than the amount of computation the kernel
does.
* A slightly daster Q4_K AVX2 dot product
For perplexity, where we are less memory bound, time per
pass drops by ~5%. Barely measurable difference for single
token prediction.
* A slightly faster ARM_NEON A4_K dot product
* Minor
* Fix quantization error test
We cannot possibly be expecting rmse < 0.002 for 2- and 3-bit
quantization variants.
* Fix docker build
I have been sloppy with vector reinterpret casts on ARM_NEON.
It seems clang is very forgiving in that regard.
* Added forgotten ggml.o dependence on k_quants.h to the Makefile
* Had unintentionally committed the Makefile with -Ofast enabled
* ggml : rename k_quants -> ggml-quants-k, use lowercase in code
---------
Co-authored-by: Iwan Kawrakow <iwan.kawrakow@gmail.com>
Co-authored-by: Georgi Gerganov <ggerganov@gmail.com>
2023-06-05 21:56:18 +02:00
|
|
|
static void dequantize_row_q2_k_cuda(const void * vx, float * y, const int k, cudaStream_t stream) {
|
|
|
|
const int nb = k / QK_K;
|
|
|
|
dequantize_block_q2_k<<<nb, 64, 0, stream>>>(vx, y);
|
|
|
|
}
|
|
|
|
|
|
|
|
static void dequantize_row_q3_k_cuda(const void * vx, float * y, const int k, cudaStream_t stream) {
|
|
|
|
const int nb = k / QK_K;
|
|
|
|
dequantize_block_q3_k<<<nb, 64, 0, stream>>>(vx, y);
|
|
|
|
}
|
|
|
|
|
|
|
|
static void dequantize_row_q4_k_cuda(const void * vx, float * y, const int k, cudaStream_t stream) {
|
|
|
|
const int nb = k / QK_K;
|
|
|
|
dequantize_block_q4_k<<<nb, 32, 0, stream>>>(vx, y);
|
|
|
|
}
|
|
|
|
|
|
|
|
static void dequantize_row_q5_k_cuda(const void * vx, float * y, const int k, cudaStream_t stream) {
|
|
|
|
const int nb = k / QK_K;
|
|
|
|
dequantize_block_q5_k<<<nb, 64, 0, stream>>>(vx, y);
|
|
|
|
}
|
|
|
|
|
|
|
|
static void dequantize_row_q6_k_cuda(const void * vx, float * y, const int k, cudaStream_t stream) {
|
|
|
|
const int nb = k / QK_K;
|
|
|
|
dequantize_block_q6_k<<<nb, 64, 0, stream>>>(vx, y);
|
|
|
|
}
|
|
|
|
|
2023-05-13 15:38:36 +02:00
|
|
|
static void dequantize_mul_mat_vec_q4_0_cuda(const void * vx, const float * y, float * dst, const int ncols, const int nrows, cudaStream_t stream) {
|
2023-05-25 23:07:29 +02:00
|
|
|
GGML_ASSERT(ncols % GGML_CUDA_DMMV_X == 0);
|
|
|
|
GGML_ASSERT(nrows % GGML_CUDA_DMMV_Y == 0);
|
|
|
|
const dim3 block_dims(WARP_SIZE, GGML_CUDA_DMMV_Y, 1);
|
|
|
|
dequantize_mul_mat_vec<QK4_0, QR4_0, dequantize_q4_0>
|
|
|
|
<<<nrows/GGML_CUDA_DMMV_Y, block_dims, 0, stream>>>(vx, y, dst, ncols);
|
2023-05-13 15:38:36 +02:00
|
|
|
}
|
|
|
|
|
|
|
|
static void dequantize_mul_mat_vec_q4_1_cuda(const void * vx, const float * y, float * dst, const int ncols, const int nrows, cudaStream_t stream) {
|
2023-05-25 23:07:29 +02:00
|
|
|
GGML_ASSERT(ncols % GGML_CUDA_DMMV_X == 0);
|
|
|
|
GGML_ASSERT(nrows % GGML_CUDA_DMMV_Y == 0);
|
|
|
|
const dim3 block_dims(WARP_SIZE, GGML_CUDA_DMMV_Y, 1);
|
|
|
|
dequantize_mul_mat_vec<QK4_1, QR4_1, dequantize_q4_1>
|
|
|
|
<<<nrows/GGML_CUDA_DMMV_Y, block_dims, 0, stream>>>(vx, y, dst, ncols);
|
2023-05-13 15:38:36 +02:00
|
|
|
}
|
|
|
|
|
|
|
|
static void dequantize_mul_mat_vec_q5_0_cuda(const void * vx, const float * y, float * dst, const int ncols, const int nrows, cudaStream_t stream) {
|
2023-05-25 23:07:29 +02:00
|
|
|
GGML_ASSERT(ncols % GGML_CUDA_DMMV_X == 0);
|
|
|
|
GGML_ASSERT(nrows % GGML_CUDA_DMMV_Y == 0);
|
|
|
|
const dim3 block_dims(WARP_SIZE, GGML_CUDA_DMMV_Y, 1);
|
|
|
|
dequantize_mul_mat_vec<QK5_0, QR5_0, dequantize_q5_0>
|
|
|
|
<<<nrows/GGML_CUDA_DMMV_Y, block_dims, 0, stream>>>(vx, y, dst, ncols);
|
2023-05-13 15:38:36 +02:00
|
|
|
}
|
|
|
|
|
|
|
|
static void dequantize_mul_mat_vec_q5_1_cuda(const void * vx, const float * y, float * dst, const int ncols, const int nrows, cudaStream_t stream) {
|
2023-05-25 23:07:29 +02:00
|
|
|
GGML_ASSERT(ncols % GGML_CUDA_DMMV_X == 0);
|
|
|
|
GGML_ASSERT(nrows % GGML_CUDA_DMMV_Y == 0);
|
|
|
|
const dim3 block_dims(WARP_SIZE, GGML_CUDA_DMMV_Y, 1);
|
|
|
|
dequantize_mul_mat_vec<QK5_1, QR5_1, dequantize_q5_1>
|
|
|
|
<<<nrows/GGML_CUDA_DMMV_Y, block_dims, 0, stream>>>(vx, y, dst, ncols);
|
2023-05-13 15:38:36 +02:00
|
|
|
}
|
|
|
|
|
|
|
|
static void dequantize_mul_mat_vec_q8_0_cuda(const void * vx, const float * y, float * dst, const int ncols, const int nrows, cudaStream_t stream) {
|
2023-05-25 23:07:29 +02:00
|
|
|
GGML_ASSERT(ncols % GGML_CUDA_DMMV_X == 0);
|
|
|
|
GGML_ASSERT(nrows % GGML_CUDA_DMMV_Y == 0);
|
|
|
|
const dim3 block_dims(WARP_SIZE, GGML_CUDA_DMMV_Y, 1);
|
|
|
|
dequantize_mul_mat_vec<QK8_0, QR8_0, dequantize_q8_0>
|
|
|
|
<<<nrows/GGML_CUDA_DMMV_Y, block_dims, 0, stream>>>(vx, y, dst, ncols);
|
2023-05-13 15:38:36 +02:00
|
|
|
}
|
|
|
|
|
ggml : add SOTA 2,3,4,5,6 bit k-quantizations (#1684)
* Starting to add k-quantization to ggml
I think it is better to have quantization separate from
ggml. For now just adding the k-quants there, but it would be
better to also factor out the existing ggml quantizations.
* Adding Q3_K and Q8_K (de)-quantization
* Q3_K now working on CUDA and AVX2/scalar
CUDA is not ideal - ~50% slower than Q4_0 for
single token prediction, about the same in batch
mode (perplexity). CPU single token is ~55 ms
(on Ryzen 7950X).
* Some improvement for Q3_K on CUDA
It is now ~22.5 ms/token on my GPU, so ~30% slower than Q4_0.
* Some more CUDA optimizations for Q3_K
Single token is now 20.5 ms/token (~20% slower than Q4_0).
Perplexity is on par with Q4_0.
* Adding Q4_K - scalar, AVX2, CUDA
Performance is the same or perhaps very slightly better than Q4_0 on the CPU.
On the GPU, single token prediction is ~10% better than Q4_0,
batch mode (perplexity is about the same).
* Adding Q6_K - scalar, AVX2, CUDA
Performance is ~40% lower compared to Q4_K on the CPU.
This is to be expected, considering that we are memory bound
on the CPU and the 6-bit model is ~44% larger than the 4-bit.
On the GPU, single token prediction is ~6% lower than Q4_0,
batch mode (perplexity) is even closer (but still slower).
* Adding Q5_K - scalar, AVX2, CUDA
Performance is ~20% lower compared to Q4_K on the CPU.
This is to be expected, considering that we are memory bound
on the CPU and the 5-bit model is ~22% larger than the 4-bit.
On the GPU, single token prediction is about the same as Q4_0
for both, single token and batch prediction.
* Per convention, all QX_K quantizations use Q5_K for output.weight
* Adding quantization mixes
* Quantization mixes: didn't quite get what I wanted in the last commit
* Q4_K dot product for ARM_NEON
* Q6_K dot product for ARM_NEON
* Q5_K dot product for ARM_NEON
* Adding Q3_K dot for ARM_NEON
It is 22% slower than Q4_K, despite the smaller model size.
On x86_64, where we are memory bound, the Q3_K model is
quite a bit faster than Q4_K.
* A very slightly faster ARM_NEON Q3_K dot
* Adding Q2_K - just CUDA for now
Token prediction is pretty good - about 15.5 ms on a RTX 4080.
Perplexity is about the same as Q4_K.
* Adding scalar and AVX2 Q2_K dot
* Adding ARM_NEON Q2_K dot
About the same performance as Q4_K.
* A slightly faster ARM_NEON Q2_K dot
Single token prediction is now ~36 ms on M2 Max.
The code is much simpler too.
* Fixed bug in Q2_K CUDA dot product kernel
Stranegly enough, for the few prompts I tried with the 7B model
the responses looked perfectly reasonable. Only realized something
is not quite right when I tried the larger models and started getting
nonse back.
In any case, Q2_K single token evaluation time on an RTX 4080 in a Ryzen7950X
box iusing CUDA and model fully loaded on the GPU are
~15.5 ms for 7B, ~25.4 ms for 13B, and ~55.8 ms for 30B.
The max number of layers that fit in VRAM for The 65B is 32.
With that, we get ~330 ms per token, which is not that much faster
than just running on the CPU (~470 ms per token).
* Don't print zeros/NaNs when no count histogram has been collected
* A 10% faster CUDA vector dot kernel for Q3_K
Q3_K is now running at ~18.5 ms / token on CUDA,
so the gap to Q4_0 is only 10%.
It seems memory acccess pattern is more important for
performance than the amount of computation the kernel
does.
* A slightly daster Q4_K AVX2 dot product
For perplexity, where we are less memory bound, time per
pass drops by ~5%. Barely measurable difference for single
token prediction.
* A slightly faster ARM_NEON A4_K dot product
* Minor
* Fix quantization error test
We cannot possibly be expecting rmse < 0.002 for 2- and 3-bit
quantization variants.
* Fix docker build
I have been sloppy with vector reinterpret casts on ARM_NEON.
It seems clang is very forgiving in that regard.
* Added forgotten ggml.o dependence on k_quants.h to the Makefile
* Had unintentionally committed the Makefile with -Ofast enabled
* ggml : rename k_quants -> ggml-quants-k, use lowercase in code
---------
Co-authored-by: Iwan Kawrakow <iwan.kawrakow@gmail.com>
Co-authored-by: Georgi Gerganov <ggerganov@gmail.com>
2023-06-05 21:56:18 +02:00
|
|
|
static void dequantize_mul_mat_vec_q2_k_cuda(const void * vx, const float * y, float * dst, const int ncols, const int nrows, cudaStream_t stream) {
|
|
|
|
GGML_ASSERT(ncols % QK_K == 0);
|
|
|
|
const int ny = 2;
|
|
|
|
const dim3 block_dims(32, ny, 1);
|
|
|
|
dequantize_mul_mat_vec_k<32, vec_dot_q2_k><<<(nrows + ny - 1)/ny, block_dims, 0, stream>>>(vx, y, dst, ncols);
|
|
|
|
}
|
|
|
|
|
|
|
|
static void dequantize_mul_mat_vec_q3_k_cuda(const void * vx, const float * y, float * dst, const int ncols, const int nrows, cudaStream_t stream) {
|
|
|
|
GGML_ASSERT(ncols % QK_K == 0);
|
|
|
|
const dim3 block_dims(32, 2, 1);
|
|
|
|
dequantize_mul_mat_vec_k<32, vec_dot_q3_k><<<nrows/2, block_dims, 0, stream>>>(vx, y, dst, ncols);
|
|
|
|
}
|
|
|
|
|
|
|
|
static void dequantize_mul_mat_vec_q4_k_cuda(const void * vx, const float * y, float * dst, const int ncols, const int nrows, cudaStream_t stream) {
|
|
|
|
GGML_ASSERT(ncols % QK_K == 0);
|
|
|
|
const dim3 block_dims(32, 2, 1);
|
|
|
|
dequantize_mul_mat_vec_k<32, vec_dot_q4_k><<<nrows/2, block_dims, 0, stream>>>(vx, y, dst, ncols);
|
|
|
|
}
|
|
|
|
|
|
|
|
static void dequantize_mul_mat_vec_q5_k_cuda(const void * vx, const float * y, float * dst, const int ncols, const int nrows, cudaStream_t stream) {
|
|
|
|
GGML_ASSERT(ncols % QK_K == 0);
|
|
|
|
const dim3 block_dims(32, 2, 1);
|
|
|
|
dequantize_mul_mat_vec_k<32, vec_dot_q5_k><<<nrows/2, block_dims, 0, stream>>>(vx, y, dst, ncols);
|
|
|
|
}
|
|
|
|
|
|
|
|
static void dequantize_mul_mat_vec_q6_k_cuda(const void * vx, const float * y, float * dst, const int ncols, const int nrows, cudaStream_t stream) {
|
|
|
|
GGML_ASSERT(ncols % QK_K == 0);
|
|
|
|
const dim3 block_dims(32, 2, 1);
|
|
|
|
dequantize_mul_mat_vec_k<32, vec_dot_q6_k><<<nrows/2, block_dims, 0, stream>>>(vx, y, dst, ncols);
|
|
|
|
}
|
|
|
|
|
2023-05-14 20:53:23 +02:00
|
|
|
static void convert_fp16_to_fp32_cuda(const void * vx, float * y, const int k, cudaStream_t stream) {
|
|
|
|
const int num_blocks = (k + CUDA_DEQUANTIZE_BLOCK_SIZE - 1) / CUDA_DEQUANTIZE_BLOCK_SIZE;
|
|
|
|
dequantize_block<32, 1, convert_f16><<<num_blocks, CUDA_DEQUANTIZE_BLOCK_SIZE, 0, stream>>>(vx, y, k);
|
2023-05-01 18:11:07 +02:00
|
|
|
}
|
|
|
|
|
2023-05-13 15:38:36 +02:00
|
|
|
static void convert_mul_mat_vec_f16_cuda(const void * vx, const float * y, float * dst, const int ncols, const int nrows, cudaStream_t stream) {
|
2023-05-25 23:07:29 +02:00
|
|
|
GGML_ASSERT(ncols % GGML_CUDA_DMMV_X == 0);
|
|
|
|
GGML_ASSERT(nrows % GGML_CUDA_DMMV_Y == 0);
|
|
|
|
const dim3 block_dims(WARP_SIZE, GGML_CUDA_DMMV_Y, 1);
|
|
|
|
dequantize_mul_mat_vec<1, 1, convert_f16>
|
|
|
|
<<<nrows/GGML_CUDA_DMMV_Y, block_dims, 0, stream>>>(vx, y, dst, ncols);
|
2023-05-13 15:38:36 +02:00
|
|
|
}
|
|
|
|
|
2023-05-01 18:11:07 +02:00
|
|
|
static to_fp32_cuda_t ggml_get_to_fp32_cuda(ggml_type type) {
|
2023-04-29 02:04:18 +02:00
|
|
|
switch (type) {
|
|
|
|
case GGML_TYPE_Q4_0:
|
|
|
|
return dequantize_row_q4_0_cuda;
|
|
|
|
case GGML_TYPE_Q4_1:
|
|
|
|
return dequantize_row_q4_1_cuda;
|
|
|
|
case GGML_TYPE_Q5_0:
|
|
|
|
return dequantize_row_q5_0_cuda;
|
|
|
|
case GGML_TYPE_Q5_1:
|
|
|
|
return dequantize_row_q5_1_cuda;
|
|
|
|
case GGML_TYPE_Q8_0:
|
|
|
|
return dequantize_row_q8_0_cuda;
|
ggml : add SOTA 2,3,4,5,6 bit k-quantizations (#1684)
* Starting to add k-quantization to ggml
I think it is better to have quantization separate from
ggml. For now just adding the k-quants there, but it would be
better to also factor out the existing ggml quantizations.
* Adding Q3_K and Q8_K (de)-quantization
* Q3_K now working on CUDA and AVX2/scalar
CUDA is not ideal - ~50% slower than Q4_0 for
single token prediction, about the same in batch
mode (perplexity). CPU single token is ~55 ms
(on Ryzen 7950X).
* Some improvement for Q3_K on CUDA
It is now ~22.5 ms/token on my GPU, so ~30% slower than Q4_0.
* Some more CUDA optimizations for Q3_K
Single token is now 20.5 ms/token (~20% slower than Q4_0).
Perplexity is on par with Q4_0.
* Adding Q4_K - scalar, AVX2, CUDA
Performance is the same or perhaps very slightly better than Q4_0 on the CPU.
On the GPU, single token prediction is ~10% better than Q4_0,
batch mode (perplexity is about the same).
* Adding Q6_K - scalar, AVX2, CUDA
Performance is ~40% lower compared to Q4_K on the CPU.
This is to be expected, considering that we are memory bound
on the CPU and the 6-bit model is ~44% larger than the 4-bit.
On the GPU, single token prediction is ~6% lower than Q4_0,
batch mode (perplexity) is even closer (but still slower).
* Adding Q5_K - scalar, AVX2, CUDA
Performance is ~20% lower compared to Q4_K on the CPU.
This is to be expected, considering that we are memory bound
on the CPU and the 5-bit model is ~22% larger than the 4-bit.
On the GPU, single token prediction is about the same as Q4_0
for both, single token and batch prediction.
* Per convention, all QX_K quantizations use Q5_K for output.weight
* Adding quantization mixes
* Quantization mixes: didn't quite get what I wanted in the last commit
* Q4_K dot product for ARM_NEON
* Q6_K dot product for ARM_NEON
* Q5_K dot product for ARM_NEON
* Adding Q3_K dot for ARM_NEON
It is 22% slower than Q4_K, despite the smaller model size.
On x86_64, where we are memory bound, the Q3_K model is
quite a bit faster than Q4_K.
* A very slightly faster ARM_NEON Q3_K dot
* Adding Q2_K - just CUDA for now
Token prediction is pretty good - about 15.5 ms on a RTX 4080.
Perplexity is about the same as Q4_K.
* Adding scalar and AVX2 Q2_K dot
* Adding ARM_NEON Q2_K dot
About the same performance as Q4_K.
* A slightly faster ARM_NEON Q2_K dot
Single token prediction is now ~36 ms on M2 Max.
The code is much simpler too.
* Fixed bug in Q2_K CUDA dot product kernel
Stranegly enough, for the few prompts I tried with the 7B model
the responses looked perfectly reasonable. Only realized something
is not quite right when I tried the larger models and started getting
nonse back.
In any case, Q2_K single token evaluation time on an RTX 4080 in a Ryzen7950X
box iusing CUDA and model fully loaded on the GPU are
~15.5 ms for 7B, ~25.4 ms for 13B, and ~55.8 ms for 30B.
The max number of layers that fit in VRAM for The 65B is 32.
With that, we get ~330 ms per token, which is not that much faster
than just running on the CPU (~470 ms per token).
* Don't print zeros/NaNs when no count histogram has been collected
* A 10% faster CUDA vector dot kernel for Q3_K
Q3_K is now running at ~18.5 ms / token on CUDA,
so the gap to Q4_0 is only 10%.
It seems memory acccess pattern is more important for
performance than the amount of computation the kernel
does.
* A slightly daster Q4_K AVX2 dot product
For perplexity, where we are less memory bound, time per
pass drops by ~5%. Barely measurable difference for single
token prediction.
* A slightly faster ARM_NEON A4_K dot product
* Minor
* Fix quantization error test
We cannot possibly be expecting rmse < 0.002 for 2- and 3-bit
quantization variants.
* Fix docker build
I have been sloppy with vector reinterpret casts on ARM_NEON.
It seems clang is very forgiving in that regard.
* Added forgotten ggml.o dependence on k_quants.h to the Makefile
* Had unintentionally committed the Makefile with -Ofast enabled
* ggml : rename k_quants -> ggml-quants-k, use lowercase in code
---------
Co-authored-by: Iwan Kawrakow <iwan.kawrakow@gmail.com>
Co-authored-by: Georgi Gerganov <ggerganov@gmail.com>
2023-06-05 21:56:18 +02:00
|
|
|
case GGML_TYPE_Q2_K:
|
|
|
|
return dequantize_row_q2_k_cuda;
|
|
|
|
case GGML_TYPE_Q3_K:
|
|
|
|
return dequantize_row_q3_k_cuda;
|
|
|
|
case GGML_TYPE_Q4_K:
|
|
|
|
return dequantize_row_q4_k_cuda;
|
|
|
|
case GGML_TYPE_Q5_K:
|
|
|
|
return dequantize_row_q5_k_cuda;
|
|
|
|
case GGML_TYPE_Q6_K:
|
|
|
|
return dequantize_row_q6_k_cuda;
|
2023-05-01 18:11:07 +02:00
|
|
|
case GGML_TYPE_F16:
|
|
|
|
return convert_fp16_to_fp32_cuda;
|
2023-04-29 02:04:18 +02:00
|
|
|
default:
|
|
|
|
return nullptr;
|
|
|
|
}
|
|
|
|
}
|
|
|
|
|
2023-05-13 15:38:36 +02:00
|
|
|
static dequantize_mul_mat_vec_cuda_t ggml_get_dequantize_mul_mat_vec_cuda(ggml_type type) {
|
|
|
|
switch (type) {
|
|
|
|
case GGML_TYPE_Q4_0:
|
|
|
|
return dequantize_mul_mat_vec_q4_0_cuda;
|
|
|
|
case GGML_TYPE_Q4_1:
|
|
|
|
return dequantize_mul_mat_vec_q4_1_cuda;
|
|
|
|
case GGML_TYPE_Q5_0:
|
|
|
|
return dequantize_mul_mat_vec_q5_0_cuda;
|
|
|
|
case GGML_TYPE_Q5_1:
|
|
|
|
return dequantize_mul_mat_vec_q5_1_cuda;
|
|
|
|
case GGML_TYPE_Q8_0:
|
|
|
|
return dequantize_mul_mat_vec_q8_0_cuda;
|
ggml : add SOTA 2,3,4,5,6 bit k-quantizations (#1684)
* Starting to add k-quantization to ggml
I think it is better to have quantization separate from
ggml. For now just adding the k-quants there, but it would be
better to also factor out the existing ggml quantizations.
* Adding Q3_K and Q8_K (de)-quantization
* Q3_K now working on CUDA and AVX2/scalar
CUDA is not ideal - ~50% slower than Q4_0 for
single token prediction, about the same in batch
mode (perplexity). CPU single token is ~55 ms
(on Ryzen 7950X).
* Some improvement for Q3_K on CUDA
It is now ~22.5 ms/token on my GPU, so ~30% slower than Q4_0.
* Some more CUDA optimizations for Q3_K
Single token is now 20.5 ms/token (~20% slower than Q4_0).
Perplexity is on par with Q4_0.
* Adding Q4_K - scalar, AVX2, CUDA
Performance is the same or perhaps very slightly better than Q4_0 on the CPU.
On the GPU, single token prediction is ~10% better than Q4_0,
batch mode (perplexity is about the same).
* Adding Q6_K - scalar, AVX2, CUDA
Performance is ~40% lower compared to Q4_K on the CPU.
This is to be expected, considering that we are memory bound
on the CPU and the 6-bit model is ~44% larger than the 4-bit.
On the GPU, single token prediction is ~6% lower than Q4_0,
batch mode (perplexity) is even closer (but still slower).
* Adding Q5_K - scalar, AVX2, CUDA
Performance is ~20% lower compared to Q4_K on the CPU.
This is to be expected, considering that we are memory bound
on the CPU and the 5-bit model is ~22% larger than the 4-bit.
On the GPU, single token prediction is about the same as Q4_0
for both, single token and batch prediction.
* Per convention, all QX_K quantizations use Q5_K for output.weight
* Adding quantization mixes
* Quantization mixes: didn't quite get what I wanted in the last commit
* Q4_K dot product for ARM_NEON
* Q6_K dot product for ARM_NEON
* Q5_K dot product for ARM_NEON
* Adding Q3_K dot for ARM_NEON
It is 22% slower than Q4_K, despite the smaller model size.
On x86_64, where we are memory bound, the Q3_K model is
quite a bit faster than Q4_K.
* A very slightly faster ARM_NEON Q3_K dot
* Adding Q2_K - just CUDA for now
Token prediction is pretty good - about 15.5 ms on a RTX 4080.
Perplexity is about the same as Q4_K.
* Adding scalar and AVX2 Q2_K dot
* Adding ARM_NEON Q2_K dot
About the same performance as Q4_K.
* A slightly faster ARM_NEON Q2_K dot
Single token prediction is now ~36 ms on M2 Max.
The code is much simpler too.
* Fixed bug in Q2_K CUDA dot product kernel
Stranegly enough, for the few prompts I tried with the 7B model
the responses looked perfectly reasonable. Only realized something
is not quite right when I tried the larger models and started getting
nonse back.
In any case, Q2_K single token evaluation time on an RTX 4080 in a Ryzen7950X
box iusing CUDA and model fully loaded on the GPU are
~15.5 ms for 7B, ~25.4 ms for 13B, and ~55.8 ms for 30B.
The max number of layers that fit in VRAM for The 65B is 32.
With that, we get ~330 ms per token, which is not that much faster
than just running on the CPU (~470 ms per token).
* Don't print zeros/NaNs when no count histogram has been collected
* A 10% faster CUDA vector dot kernel for Q3_K
Q3_K is now running at ~18.5 ms / token on CUDA,
so the gap to Q4_0 is only 10%.
It seems memory acccess pattern is more important for
performance than the amount of computation the kernel
does.
* A slightly daster Q4_K AVX2 dot product
For perplexity, where we are less memory bound, time per
pass drops by ~5%. Barely measurable difference for single
token prediction.
* A slightly faster ARM_NEON A4_K dot product
* Minor
* Fix quantization error test
We cannot possibly be expecting rmse < 0.002 for 2- and 3-bit
quantization variants.
* Fix docker build
I have been sloppy with vector reinterpret casts on ARM_NEON.
It seems clang is very forgiving in that regard.
* Added forgotten ggml.o dependence on k_quants.h to the Makefile
* Had unintentionally committed the Makefile with -Ofast enabled
* ggml : rename k_quants -> ggml-quants-k, use lowercase in code
---------
Co-authored-by: Iwan Kawrakow <iwan.kawrakow@gmail.com>
Co-authored-by: Georgi Gerganov <ggerganov@gmail.com>
2023-06-05 21:56:18 +02:00
|
|
|
case GGML_TYPE_Q2_K:
|
|
|
|
return dequantize_mul_mat_vec_q2_k_cuda;
|
|
|
|
case GGML_TYPE_Q3_K:
|
|
|
|
return dequantize_mul_mat_vec_q3_k_cuda;
|
|
|
|
case GGML_TYPE_Q4_K:
|
|
|
|
return dequantize_mul_mat_vec_q4_k_cuda;
|
|
|
|
case GGML_TYPE_Q5_K:
|
|
|
|
return dequantize_mul_mat_vec_q5_k_cuda;
|
|
|
|
case GGML_TYPE_Q6_K:
|
|
|
|
return dequantize_mul_mat_vec_q6_k_cuda;
|
2023-05-13 15:38:36 +02:00
|
|
|
case GGML_TYPE_F16:
|
2023-05-13 16:40:58 +02:00
|
|
|
return convert_mul_mat_vec_f16_cuda;
|
2023-05-13 15:38:36 +02:00
|
|
|
default:
|
|
|
|
return nullptr;
|
|
|
|
}
|
|
|
|
}
|
|
|
|
|
2023-04-21 21:59:17 +02:00
|
|
|
// buffer pool for cuda
|
2023-05-13 15:38:36 +02:00
|
|
|
#define MAX_CUDA_BUFFERS 256
|
2023-04-21 21:59:17 +02:00
|
|
|
|
|
|
|
struct scoped_spin_lock {
|
|
|
|
std::atomic_flag& lock;
|
|
|
|
scoped_spin_lock(std::atomic_flag& lock) : lock(lock) {
|
|
|
|
while (lock.test_and_set(std::memory_order_acquire)) {
|
|
|
|
; // spin
|
|
|
|
}
|
|
|
|
}
|
|
|
|
~scoped_spin_lock() {
|
|
|
|
lock.clear(std::memory_order_release);
|
|
|
|
}
|
|
|
|
scoped_spin_lock(const scoped_spin_lock&) = delete;
|
|
|
|
scoped_spin_lock& operator=(const scoped_spin_lock&) = delete;
|
|
|
|
};
|
|
|
|
|
|
|
|
struct cuda_buffer {
|
|
|
|
void * ptr = nullptr;
|
|
|
|
size_t size = 0;
|
|
|
|
};
|
|
|
|
|
|
|
|
static cuda_buffer g_cuda_buffer_pool[MAX_CUDA_BUFFERS];
|
|
|
|
static std::atomic_flag g_cuda_pool_lock = ATOMIC_FLAG_INIT;
|
|
|
|
|
2023-05-01 18:11:07 +02:00
|
|
|
static void * ggml_cuda_pool_malloc(size_t size, size_t * actual_size) {
|
2023-04-21 21:59:17 +02:00
|
|
|
scoped_spin_lock lock(g_cuda_pool_lock);
|
|
|
|
|
|
|
|
for (int i = 0; i < MAX_CUDA_BUFFERS; ++i) {
|
|
|
|
cuda_buffer& b = g_cuda_buffer_pool[i];
|
|
|
|
if (b.size >= size && b.ptr != nullptr) {
|
|
|
|
void * ptr = b.ptr;
|
|
|
|
*actual_size = b.size;
|
|
|
|
b.ptr = nullptr;
|
|
|
|
b.size = 0;
|
|
|
|
return ptr;
|
|
|
|
}
|
2023-04-20 03:14:14 +02:00
|
|
|
}
|
2023-04-21 21:59:17 +02:00
|
|
|
void * ptr;
|
|
|
|
CUDA_CHECK(cudaMalloc((void **) &ptr, size));
|
|
|
|
*actual_size = size;
|
|
|
|
return ptr;
|
|
|
|
}
|
|
|
|
|
2023-05-01 18:11:07 +02:00
|
|
|
static void ggml_cuda_pool_free(void * ptr, size_t size) {
|
2023-04-21 21:59:17 +02:00
|
|
|
scoped_spin_lock lock(g_cuda_pool_lock);
|
2023-04-20 03:14:14 +02:00
|
|
|
|
2023-04-21 21:59:17 +02:00
|
|
|
for (int i = 0; i < MAX_CUDA_BUFFERS; ++i) {
|
|
|
|
cuda_buffer& b = g_cuda_buffer_pool[i];
|
|
|
|
if (b.ptr == nullptr) {
|
|
|
|
b.ptr = ptr;
|
|
|
|
b.size = size;
|
|
|
|
return;
|
|
|
|
}
|
2023-04-20 03:14:14 +02:00
|
|
|
}
|
2023-04-21 21:59:17 +02:00
|
|
|
fprintf(stderr, "WARNING: cuda buffer pool full, increase MAX_CUDA_BUFFERS\n");
|
|
|
|
CUDA_CHECK(cudaFree(ptr));
|
|
|
|
}
|
|
|
|
|
2023-05-08 02:42:01 +02:00
|
|
|
#define GGML_CUDA_MAX_STREAMS 8 // Set this to 1 for reproducible matrix multiplication.
|
2023-05-01 18:11:07 +02:00
|
|
|
#define GGML_CUDA_MAX_EVENTS 64
|
|
|
|
static cublasHandle_t g_cublasH = nullptr;
|
|
|
|
static cudaStream_t g_cudaStreams[GGML_CUDA_MAX_STREAMS] = { nullptr };
|
|
|
|
static cudaStream_t g_cudaStreams2[GGML_CUDA_MAX_STREAMS] = { nullptr };
|
|
|
|
static cudaEvent_t g_cudaEvents[GGML_CUDA_MAX_EVENTS] = { nullptr };
|
2023-04-21 21:59:17 +02:00
|
|
|
|
2023-04-29 02:04:18 +02:00
|
|
|
void ggml_init_cublas() {
|
|
|
|
if (g_cublasH == nullptr) {
|
2023-05-01 18:11:07 +02:00
|
|
|
// create streams
|
|
|
|
for (int i = 0; i < GGML_CUDA_MAX_STREAMS; ++i) {
|
|
|
|
CUDA_CHECK(cudaStreamCreateWithFlags(&g_cudaStreams[i], cudaStreamNonBlocking));
|
|
|
|
CUDA_CHECK(cudaStreamCreateWithFlags(&g_cudaStreams2[i], cudaStreamNonBlocking));
|
|
|
|
}
|
|
|
|
// create events
|
|
|
|
for (int i = 0; i < GGML_CUDA_MAX_EVENTS; ++i) {
|
|
|
|
CUDA_CHECK(cudaEventCreateWithFlags(&g_cudaEvents[i], cudaEventDisableTiming));
|
|
|
|
}
|
2023-04-20 20:49:53 +02:00
|
|
|
|
2023-05-01 18:11:07 +02:00
|
|
|
// create cublas handle
|
|
|
|
CUBLAS_CHECK(cublasCreate(&g_cublasH));
|
|
|
|
CUBLAS_CHECK(cublasSetMathMode(g_cublasH, CUBLAS_TF32_TENSOR_OP_MATH));
|
2023-04-29 02:04:18 +02:00
|
|
|
|
2023-04-21 21:59:17 +02:00
|
|
|
// configure logging to stdout
|
2023-05-01 18:11:07 +02:00
|
|
|
// CUBLAS_CHECK(cublasLoggerConfigure(1, 1, 0, nullptr));
|
|
|
|
}
|
|
|
|
}
|
|
|
|
|
|
|
|
void * ggml_cuda_host_malloc(size_t size) {
|
|
|
|
if (getenv("GGML_CUDA_NO_PINNED") != nullptr) {
|
|
|
|
return nullptr;
|
2023-04-20 20:49:53 +02:00
|
|
|
}
|
2023-05-01 18:11:07 +02:00
|
|
|
|
|
|
|
void * ptr = nullptr;
|
|
|
|
cudaError_t err = cudaMallocHost((void **) &ptr, size);
|
|
|
|
if (err != cudaSuccess) {
|
|
|
|
fprintf(stderr, "WARNING: failed to allocate %.2f MB of pinned memory: %s\n",
|
|
|
|
size/1024.0/1024.0, cudaGetErrorString(err));
|
|
|
|
return nullptr;
|
|
|
|
}
|
|
|
|
|
|
|
|
return ptr;
|
|
|
|
}
|
|
|
|
|
|
|
|
void ggml_cuda_host_free(void * ptr) {
|
|
|
|
CUDA_CHECK(cudaFreeHost(ptr));
|
2023-04-20 03:14:14 +02:00
|
|
|
}
|
2023-04-29 01:31:56 +02:00
|
|
|
|
2023-05-01 18:11:07 +02:00
|
|
|
static cudaError_t ggml_cuda_h2d_tensor_2d(void * dst, const struct ggml_tensor * src, uint64_t i3, uint64_t i2, cudaStream_t stream) {
|
2023-04-29 01:31:56 +02:00
|
|
|
const uint64_t ne0 = src->ne[0];
|
|
|
|
const uint64_t ne1 = src->ne[1];
|
|
|
|
const uint64_t nb0 = src->nb[0];
|
|
|
|
const uint64_t nb1 = src->nb[1];
|
|
|
|
const uint64_t nb2 = src->nb[2];
|
|
|
|
const uint64_t nb3 = src->nb[3];
|
|
|
|
const enum ggml_type type = src->type;
|
|
|
|
const size_t ts = ggml_type_size(type);
|
|
|
|
const size_t bs = ggml_blck_size(type);
|
|
|
|
|
|
|
|
const void * x = (const void *) ((const char *) src->data + i2*nb2 + i3*nb3);
|
|
|
|
if (nb0 == ts && nb1 == ts*ne0/bs) {
|
|
|
|
return cudaMemcpyAsync(dst, x, ne1*nb1, cudaMemcpyHostToDevice, stream);
|
|
|
|
} else if (nb0 == ts) {
|
|
|
|
return cudaMemcpy2DAsync(dst, ts*ne0/bs, x, nb1, ts*ne0/bs, ne1, cudaMemcpyHostToDevice, stream);
|
|
|
|
} else {
|
|
|
|
for (uint64_t i1 = 0; i1 < ne1; i1++) {
|
|
|
|
const void * rx = (const void *) ((const char *) x + i1*nb1);
|
|
|
|
void * rd = (void *) ((char *) dst + i1*ts*ne0/bs);
|
|
|
|
// pretend the row is a matrix with cols=1
|
|
|
|
cudaError_t r = cudaMemcpy2DAsync(rd, ts/bs, rx, nb0, ts/bs, ne0, cudaMemcpyHostToDevice, stream);
|
|
|
|
if (r != cudaSuccess) return r;
|
|
|
|
}
|
|
|
|
return cudaSuccess;
|
|
|
|
}
|
|
|
|
}
|
2023-04-29 02:04:18 +02:00
|
|
|
|
cuda : loading models directly into VRAM, norm calculation on GPU, broadcasting for ggml_mul (#1483)
* Broadcasting for ggml_mul
* CUDA kernel for ggml_mul, norms in VRAM
* GPU weights not in RAM, direct loading with cuFile
* fixup! GPU weights not in RAM, direct loading with cuFile
* fixup! GPU weights not in RAM, direct loading with cuFile
* define default model path once, sync path with readme (#1366)
* ~7% faster Q5_1 AVX2 code (#1477)
* convert.py: Support models which are stored in a single pytorch_model.bin (#1469)
* Support models in a single pytorch_model.bin
* Remove spurious line with typo
* benchmark-matmul: Print the average of the test results (#1490)
* Remove unused n_parts parameter (#1509)
* Fixes #1511 lambda issue for w64devkit (mingw) (#1513)
* Fix for w64devkit and mingw
* make kv_f16 the default for api users (#1517)
* minor : fix compile warnings
* readme : adds WizardLM to the list of supported models (#1485)
* main : make reverse prompt option act as a stop token in non-interactive mode (#1032)
* Make reverse prompt option act as a stop token in non-interactive scenarios
* Making requested review changes
* Update gpt_params_parse and fix a merge error
* Revert "Update gpt_params_parse and fix a merge error"
This reverts commit 2bb2ff1748513591ad45b175a75ed1d8089d84c8.
* Update gpt_params_parse and fix a merge error take 2
* examples : add persistent chat (#1495)
* examples : add persistent chat
* examples : fix whitespace
---------
Co-authored-by: Georgi Gerganov <ggerganov@gmail.com>
* tests : add missing header
* ggml : use F16 instead of F32 in Q4_0, Q4_1, Q8_0 (#1508)
* ggml : use F16 instead of F32 in Q4_0, Q4_1 and Q8_0
* llama : bump LLAMA_FILE_VERSION to 3
* cuda : update Q4 and Q8 dequantize kernels
* ggml : fix AVX dot products
* readme : update performance table + hot topics
* ggml : fix scalar implementation of Q4_1 dot
* llama : fix compile warnings in llama_set_state_data()
* llama : fix name shadowing and C4146 (#1526)
* Fix name shadowing and C4146
* Fix if macros not using defined when required
* Update llama-util.h
Co-authored-by: github-actions[bot] <41898282+github-actions[bot]@users.noreply.github.com>
* Update llama-util.h
Co-authored-by: github-actions[bot] <41898282+github-actions[bot]@users.noreply.github.com>
* Code style
Co-authored-by: Georgi Gerganov <ggerganov@gmail.com>
---------
Co-authored-by: github-actions[bot] <41898282+github-actions[bot]@users.noreply.github.com>
Co-authored-by: Georgi Gerganov <ggerganov@gmail.com>
* Fix for mingw (#1462)
* llama : add llama_init_backend() API (close #1527)
* feature : add blis and other BLAS implementation support (#1502)
* feature: add blis support
* feature: allow all BLA_VENDOR to be assigned in cmake arguments. align with whisper.cpp pr 927
* fix: version detection for BLA_SIZEOF_INTEGER, recover min version of cmake
* Fix typo in INTEGER
Co-authored-by: Georgi Gerganov <ggerganov@gmail.com>
---------
Co-authored-by: Georgi Gerganov <ggerganov@gmail.com>
* Revert "feature : add blis and other BLAS implementation support (#1502)"
This reverts commit 07e9ace0f9da424d82e75df969642522880feb92.
* GPU weights not in RAM, direct loading with cuFile
* llama : code style fixes + progress print fix
* ggml : ggml_mul better broadcast support
* cmake : workarounds for cufile when CMake version < 3.25
* gg rebase fixup
* Loop in llama.cpp, fixed progress callback
* Attempt clang-tidy fix
* llama : fix vram size computation
* Add forgotten fclose()
---------
Co-authored-by: András Salamon <ott2@users.noreply.github.com>
Co-authored-by: Ilya Kurdyukov <59548320+ilyakurdyukov@users.noreply.github.com>
Co-authored-by: Tom Jobbins <784313+TheBloke@users.noreply.github.com>
Co-authored-by: rankaiyx <rankaiyx@rankaiyx.com>
Co-authored-by: Stephan Walter <stephan@walter.name>
Co-authored-by: DannyDaemonic <DannyDaemonic@gmail.com>
Co-authored-by: Erik Scholz <Green-Sky@users.noreply.github.com>
Co-authored-by: Georgi Gerganov <ggerganov@gmail.com>
Co-authored-by: David Kennedy <dakennedyd@gmail.com>
Co-authored-by: Jason McCartney <jmac@theroot.org>
Co-authored-by: Evan Jones <evan.q.jones@gmail.com>
Co-authored-by: Maxime <672982+maximegmd@users.noreply.github.com>
Co-authored-by: github-actions[bot] <41898282+github-actions[bot]@users.noreply.github.com>
Co-authored-by: Zenix <zenixls2@gmail.com>
2023-05-20 14:19:28 +02:00
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static void ggml_cuda_mul_f32(const ggml_tensor * src0, const ggml_tensor * src1, ggml_tensor * dst) {
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GGML_ASSERT(src1->backend == GGML_BACKEND_CUDA);
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const int64_t ne00 = src0->ne[0];
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const int64_t ne01 = src0->ne[1];
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const int64_t ne02 = src0->ne[2];
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const int64_t ne03 = src0->ne[2];
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const int64_t ne0 = ne00 * ne01 * ne02 * ne03;
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const int64_t ne10 = src1->ne[0];
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const int64_t ne11 = src1->ne[1];
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const int64_t ne12 = src1->ne[2];
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const int64_t ne13 = src1->ne[3];
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const int nb2 = dst->nb[2];
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const int nb3 = dst->nb[3];
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size_t x_size, d_size;
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float * d_X = (float *) ggml_cuda_pool_malloc(ne0 * sizeof(float), &x_size); // src0
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float * d_Y = (float *) src1->data; // src1 is already on device, broadcasted.
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float * d_D = (float *) ggml_cuda_pool_malloc(ne0 * sizeof(float), &d_size); // dst
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for (int64_t i03 = 0; i03 < ne03; i03++) {
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for (int64_t i02 = 0; i02 < ne02; i02++) {
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const int i0 = i03*ne02 + i02;
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float * c_X2 = d_X + i0*ne01*ne00;
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float * c_D2 = d_D + i0*ne01*ne00;
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cudaStream_t cudaStream = g_cudaStreams[i0 % GGML_CUDA_MAX_STREAMS];
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cudaStream_t cudaStream2 = g_cudaStreams2[i0 % GGML_CUDA_MAX_STREAMS];
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cudaEvent_t cudaEvent = g_cudaEvents[i0 % GGML_CUDA_MAX_EVENTS];
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// copy src0 to device
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CUDA_CHECK(ggml_cuda_h2d_tensor_2d(c_X2, src0, i03, i02, cudaStream2));
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CUDA_CHECK(cudaEventRecord(cudaEvent, cudaStream2));
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// wait for data
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CUDA_CHECK(cudaStreamWaitEvent(cudaStream, cudaEvent, 0));
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for (int64_t i01 = 0; i01 < ne01; i01++) {
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const int64_t i13 = i03%ne13;
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const int64_t i12 = i02%ne12;
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const int64_t i11 = i01%ne11;
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const int i1 = i13*ne12*ne11 + i12*ne11 + i11;
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float * c_X1 = c_X2 + i01*ne00;
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float * c_Y = d_Y + i1*ne10;
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float * c_D1 = c_D2 + i01*ne00;
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// compute
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mul_f32_cuda(c_X1, c_Y, c_D1, ne00, ne10, cudaStream);
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CUDA_CHECK(cudaGetLastError());
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}
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// copy dst to host
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float * d = (float *) ((char *) dst->data + i02*nb2 + i03*nb3);
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CUDA_CHECK(cudaMemcpyAsync(d, c_D2, sizeof(float)*ne00*ne01, cudaMemcpyDeviceToHost, cudaStream));
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}
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}
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CUDA_CHECK(cudaDeviceSynchronize());
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ggml_cuda_pool_free(d_X, x_size);
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ggml_cuda_pool_free(d_D, d_size);
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}
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2023-05-01 18:11:07 +02:00
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static void ggml_cuda_mul_mat_f32(const ggml_tensor * src0, const ggml_tensor * src1, ggml_tensor * dst) {
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const int64_t ne00 = src0->ne[0];
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const int64_t ne01 = src0->ne[1];
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const int64_t ne02 = src0->ne[2];
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const int64_t ne03 = src0->ne[3];
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const int64_t ne10 = src1->ne[0];
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const int64_t ne11 = src1->ne[1];
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const int nb2 = dst->nb[2];
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const int nb3 = dst->nb[3];
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const float alpha = 1.0f;
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const float beta = 0.0f;
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const int x_ne = ne01 * ne00;
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const int y_ne = ne11 * ne10;
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const int d_ne = ne11 * ne01;
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const int n_mm = ne03 * ne02;
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size_t x_size, y_size, d_size;
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float * d_X = (float *) ggml_cuda_pool_malloc(n_mm * sizeof(float) * x_ne, &x_size);
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float * d_Y = (float *) ggml_cuda_pool_malloc(n_mm * sizeof(float) * y_ne, &y_size);
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float * d_D = (float *) ggml_cuda_pool_malloc(n_mm * sizeof(float) * d_ne, &d_size);
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for (int64_t i03 = 0; i03 < ne03; i03++) {
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for (int64_t i02 = 0; i02 < ne02; i02++) {
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int i = i03*ne02 + i02;
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cudaStream_t cudaStream = g_cudaStreams[i % GGML_CUDA_MAX_STREAMS];
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float * c_X = d_X + i * x_ne;
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float * c_Y = d_Y + i * y_ne;
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float * c_D = d_D + i * d_ne;
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// copy data to device
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CUDA_CHECK(ggml_cuda_h2d_tensor_2d(c_X, src0, i03, i02, cudaStream));
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CUDA_CHECK(ggml_cuda_h2d_tensor_2d(c_Y, src1, i03, i02, cudaStream));
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// compute
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CUBLAS_CHECK(cublasSetStream(g_cublasH, cudaStream));
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CUBLAS_CHECK(
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cublasSgemm(g_cublasH, CUBLAS_OP_T, CUBLAS_OP_N,
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ne01, ne11, ne10,
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&alpha, c_X, ne00,
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c_Y, ne10,
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&beta, c_D, ne01));
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// copy dst to host
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float * d = (float *) ((char *) dst->data + i02*nb2 + i03*nb3);
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CUDA_CHECK(cudaMemcpyAsync(d, c_D, sizeof(float) * d_ne, cudaMemcpyDeviceToHost, cudaStream));
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}
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2023-05-01 13:32:22 +02:00
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}
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2023-05-01 18:11:07 +02:00
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CUDA_CHECK(cudaDeviceSynchronize());
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ggml_cuda_pool_free(d_X, x_size);
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ggml_cuda_pool_free(d_Y, y_size);
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ggml_cuda_pool_free(d_D, d_size);
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}
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static void ggml_cuda_mul_mat_f16(const ggml_tensor * src0, const ggml_tensor * src1, ggml_tensor * dst, void * wdata, size_t /* wsize */) {
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const int64_t ne00 = src0->ne[0];
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const int64_t ne01 = src0->ne[1];
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const int64_t ne02 = src0->ne[2];
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const int64_t ne03 = src0->ne[3];
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const int64_t ne10 = src1->ne[0];
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const int64_t ne11 = src1->ne[1];
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const int nb10 = src1->nb[0];
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const int nb11 = src1->nb[1];
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const int nb12 = src1->nb[2];
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const int nb13 = src1->nb[3];
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const int nb2 = dst->nb[2];
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const int nb3 = dst->nb[3];
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const float alpha = 1.0f;
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const float beta = 0.0f;
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const int x_ne = ne01 * ne00;
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const int y_ne = ne11 * ne10;
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const int d_ne = ne11 * ne01;
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const int n_mm = ne03 * ne02;
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size_t x_size, y_size, d_size;
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half * d_X = (half *) ggml_cuda_pool_malloc(n_mm * sizeof(half) * x_ne, &x_size);
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half * d_Y = (half *) ggml_cuda_pool_malloc(n_mm * sizeof(half) * y_ne, &y_size);
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float * d_D = (float *) ggml_cuda_pool_malloc(n_mm * sizeof(float) * d_ne, &d_size);
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bool src1_cont_rows = nb10 == sizeof(float);
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bool src1_cont_cols = (size_t)nb11 == ne11*sizeof(float);
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for (int64_t i03 = 0; i03 < ne03; i03++) {
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for (int64_t i02 = 0; i02 < ne02; i02++) {
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int i = i03*ne02 + i02;
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cudaStream_t cudaStream = g_cudaStreams[i % GGML_CUDA_MAX_STREAMS];
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half * c_X = d_X + i * x_ne;
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half * c_Y = d_Y + i * y_ne;
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float * c_D = d_D + i * d_ne;
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// copy src0 to device
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CUDA_CHECK(ggml_cuda_h2d_tensor_2d(c_X, src0, i03, i02, cudaStream));
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// convert src1 to fp16
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// TODO: use multiple threads
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ggml_fp16_t * const tmp = (ggml_fp16_t *) wdata + (ne11 * ne10) * (i03 * ne02 + i02);
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char * src1i = (char *) src1->data + i03*nb13 + i02*nb12;
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if (src1_cont_rows) {
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if (src1_cont_cols) {
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ggml_fp32_to_fp16_row((float *) src1i, tmp, ne10*ne11);
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}
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else {
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for (int64_t i01 = 0; i01 < ne11; i01++) {
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ggml_fp32_to_fp16_row((float *) (src1i + i01*nb11), tmp + i01*ne10, ne10);
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}
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}
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}
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else {
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for (int64_t i01 = 0; i01 < ne11; i01++) {
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for (int64_t i00 = 0; i00 < ne10; i00++) {
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// very slow due to no inlining
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tmp[i01*ne10 + i00] = ggml_fp32_to_fp16(*(float *) (src1i + i01*nb11 + i00*nb10));
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}
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}
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}
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// copy src1 to device
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CUDA_CHECK(cudaMemcpyAsync(c_Y, tmp, sizeof(half) * y_ne, cudaMemcpyHostToDevice, cudaStream));
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// compute
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CUBLAS_CHECK(cublasSetStream(g_cublasH, cudaStream));
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CUBLAS_CHECK(
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cublasGemmEx(g_cublasH, CUBLAS_OP_T, CUBLAS_OP_N,
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ne01, ne11, ne10,
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&alpha, c_X, CUDA_R_16F, ne00,
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c_Y, CUDA_R_16F, ne10,
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&beta, c_D, CUDA_R_32F, ne01,
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CUBLAS_COMPUTE_32F_FAST_16F,
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CUBLAS_GEMM_DEFAULT));
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// copy dst to host
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float * d = (float *) ((char *) dst->data + i02*nb2 + i03*nb3);
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CUDA_CHECK(cudaMemcpyAsync(d, c_D, sizeof(float) * d_ne, cudaMemcpyDeviceToHost, cudaStream));
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}
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2023-05-01 13:32:22 +02:00
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}
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2023-05-01 18:11:07 +02:00
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CUDA_CHECK(cudaDeviceSynchronize());
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ggml_cuda_pool_free(d_X, x_size);
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ggml_cuda_pool_free(d_Y, y_size);
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ggml_cuda_pool_free(d_D, d_size);
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2023-04-29 02:04:18 +02:00
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}
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2023-05-01 18:11:07 +02:00
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static void ggml_cuda_mul_mat_q_f32(const ggml_tensor * src0, const ggml_tensor * src1, ggml_tensor * dst) {
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const int64_t ne00 = src0->ne[0];
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const int64_t ne01 = src0->ne[1];
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const int64_t ne02 = src0->ne[2];
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const int64_t ne03 = src0->ne[3];
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const int64_t ne10 = src1->ne[0];
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const int64_t ne11 = src1->ne[1];
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const int nb2 = dst->nb[2];
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const int nb3 = dst->nb[3];
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const ggml_type type = src0->type;
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2023-05-13 15:38:36 +02:00
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const bool mul_mat_vec = ne11 == 1;
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2023-05-01 18:11:07 +02:00
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const float alpha = 1.0f;
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const float beta = 0.0f;
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const int x_ne = ne01 * ne00;
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const int y_ne = ne11 * ne10;
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const int d_ne = ne11 * ne01;
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const int n_mm = ne03 * ne02;
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const size_t q_sz = ggml_type_size(type) * x_ne / ggml_blck_size(type);
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size_t x_size, y_size, d_size, q_size;
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2023-05-13 15:38:36 +02:00
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float * d_X = nullptr;
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if (!mul_mat_vec) {
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d_X = (float *) ggml_cuda_pool_malloc(n_mm * sizeof(float) * x_ne, &x_size);
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}
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2023-05-01 18:11:07 +02:00
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float * d_Y = (float *) ggml_cuda_pool_malloc(n_mm * sizeof(float) * y_ne, &y_size);
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float * d_D = (float *) ggml_cuda_pool_malloc(n_mm * sizeof(float) * d_ne, &d_size);
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char * d_Q = (char *) ggml_cuda_pool_malloc(n_mm * q_sz, &q_size);
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const to_fp32_cuda_t to_fp32_cuda = ggml_get_to_fp32_cuda(type);
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2023-05-13 15:38:36 +02:00
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dequantize_mul_mat_vec_cuda_t dmmv = ggml_get_dequantize_mul_mat_vec_cuda(type);
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2023-05-01 18:11:07 +02:00
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GGML_ASSERT(to_fp32_cuda != nullptr);
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for (int64_t i03 = 0; i03 < ne03; i03++) {
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for (int64_t i02 = 0; i02 < ne02; i02++) {
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int i = i03*ne02 + i02;
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cudaStream_t cudaStream = g_cudaStreams[i % GGML_CUDA_MAX_STREAMS];
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cudaStream_t cudaStream2 = g_cudaStreams2[i % GGML_CUDA_MAX_STREAMS];
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cudaEvent_t cudaEvent = g_cudaEvents[i % GGML_CUDA_MAX_EVENTS];
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float * c_Y = d_Y + i * y_ne;
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float * c_D = d_D + i * d_ne;
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char * c_Q = d_Q + i * q_sz;
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2023-05-13 15:38:36 +02:00
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// copy src0 to device if necessary
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if (src0->backend == GGML_BACKEND_CPU) {
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CUDA_CHECK(ggml_cuda_h2d_tensor_2d(c_Q, src0, i03, i02, cudaStream2));
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} else if (src0->backend == GGML_BACKEND_CUDA) {
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c_Q = ((char *) src0->data) + i * q_sz;
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} else {
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GGML_ASSERT(false);
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}
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if (mul_mat_vec) { // specialized dequantize_mul_mat_vec kernel
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CUDA_CHECK(cudaEventRecord(cudaEvent, cudaStream2));
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2023-05-01 18:11:07 +02:00
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2023-05-13 15:38:36 +02:00
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// copy src1 to device
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CUDA_CHECK(ggml_cuda_h2d_tensor_2d(c_Y, src1, i03, i02, cudaStream));
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2023-05-01 18:11:07 +02:00
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2023-05-13 15:38:36 +02:00
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// wait for data
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CUDA_CHECK(cudaStreamWaitEvent(cudaStream, cudaEvent, 0));
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2023-05-01 18:11:07 +02:00
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2023-05-13 15:38:36 +02:00
|
|
|
// compute
|
ggml : add SOTA 2,3,4,5,6 bit k-quantizations (#1684)
* Starting to add k-quantization to ggml
I think it is better to have quantization separate from
ggml. For now just adding the k-quants there, but it would be
better to also factor out the existing ggml quantizations.
* Adding Q3_K and Q8_K (de)-quantization
* Q3_K now working on CUDA and AVX2/scalar
CUDA is not ideal - ~50% slower than Q4_0 for
single token prediction, about the same in batch
mode (perplexity). CPU single token is ~55 ms
(on Ryzen 7950X).
* Some improvement for Q3_K on CUDA
It is now ~22.5 ms/token on my GPU, so ~30% slower than Q4_0.
* Some more CUDA optimizations for Q3_K
Single token is now 20.5 ms/token (~20% slower than Q4_0).
Perplexity is on par with Q4_0.
* Adding Q4_K - scalar, AVX2, CUDA
Performance is the same or perhaps very slightly better than Q4_0 on the CPU.
On the GPU, single token prediction is ~10% better than Q4_0,
batch mode (perplexity is about the same).
* Adding Q6_K - scalar, AVX2, CUDA
Performance is ~40% lower compared to Q4_K on the CPU.
This is to be expected, considering that we are memory bound
on the CPU and the 6-bit model is ~44% larger than the 4-bit.
On the GPU, single token prediction is ~6% lower than Q4_0,
batch mode (perplexity) is even closer (but still slower).
* Adding Q5_K - scalar, AVX2, CUDA
Performance is ~20% lower compared to Q4_K on the CPU.
This is to be expected, considering that we are memory bound
on the CPU and the 5-bit model is ~22% larger than the 4-bit.
On the GPU, single token prediction is about the same as Q4_0
for both, single token and batch prediction.
* Per convention, all QX_K quantizations use Q5_K for output.weight
* Adding quantization mixes
* Quantization mixes: didn't quite get what I wanted in the last commit
* Q4_K dot product for ARM_NEON
* Q6_K dot product for ARM_NEON
* Q5_K dot product for ARM_NEON
* Adding Q3_K dot for ARM_NEON
It is 22% slower than Q4_K, despite the smaller model size.
On x86_64, where we are memory bound, the Q3_K model is
quite a bit faster than Q4_K.
* A very slightly faster ARM_NEON Q3_K dot
* Adding Q2_K - just CUDA for now
Token prediction is pretty good - about 15.5 ms on a RTX 4080.
Perplexity is about the same as Q4_K.
* Adding scalar and AVX2 Q2_K dot
* Adding ARM_NEON Q2_K dot
About the same performance as Q4_K.
* A slightly faster ARM_NEON Q2_K dot
Single token prediction is now ~36 ms on M2 Max.
The code is much simpler too.
* Fixed bug in Q2_K CUDA dot product kernel
Stranegly enough, for the few prompts I tried with the 7B model
the responses looked perfectly reasonable. Only realized something
is not quite right when I tried the larger models and started getting
nonse back.
In any case, Q2_K single token evaluation time on an RTX 4080 in a Ryzen7950X
box iusing CUDA and model fully loaded on the GPU are
~15.5 ms for 7B, ~25.4 ms for 13B, and ~55.8 ms for 30B.
The max number of layers that fit in VRAM for The 65B is 32.
With that, we get ~330 ms per token, which is not that much faster
than just running on the CPU (~470 ms per token).
* Don't print zeros/NaNs when no count histogram has been collected
* A 10% faster CUDA vector dot kernel for Q3_K
Q3_K is now running at ~18.5 ms / token on CUDA,
so the gap to Q4_0 is only 10%.
It seems memory acccess pattern is more important for
performance than the amount of computation the kernel
does.
* A slightly daster Q4_K AVX2 dot product
For perplexity, where we are less memory bound, time per
pass drops by ~5%. Barely measurable difference for single
token prediction.
* A slightly faster ARM_NEON A4_K dot product
* Minor
* Fix quantization error test
We cannot possibly be expecting rmse < 0.002 for 2- and 3-bit
quantization variants.
* Fix docker build
I have been sloppy with vector reinterpret casts on ARM_NEON.
It seems clang is very forgiving in that regard.
* Added forgotten ggml.o dependence on k_quants.h to the Makefile
* Had unintentionally committed the Makefile with -Ofast enabled
* ggml : rename k_quants -> ggml-quants-k, use lowercase in code
---------
Co-authored-by: Iwan Kawrakow <iwan.kawrakow@gmail.com>
Co-authored-by: Georgi Gerganov <ggerganov@gmail.com>
2023-06-05 21:56:18 +02:00
|
|
|
//printf("Calling dmmv\n");
|
2023-05-13 15:38:36 +02:00
|
|
|
dmmv(c_Q, c_Y, c_D, ne00, ne01, cudaStream);
|
|
|
|
CUDA_CHECK(cudaGetLastError());
|
|
|
|
|
|
|
|
} else { // general dequantization kernel + cuBLAS matrix matrix multiplication
|
|
|
|
float * c_X = d_X + i * x_ne;
|
|
|
|
|
ggml : add SOTA 2,3,4,5,6 bit k-quantizations (#1684)
* Starting to add k-quantization to ggml
I think it is better to have quantization separate from
ggml. For now just adding the k-quants there, but it would be
better to also factor out the existing ggml quantizations.
* Adding Q3_K and Q8_K (de)-quantization
* Q3_K now working on CUDA and AVX2/scalar
CUDA is not ideal - ~50% slower than Q4_0 for
single token prediction, about the same in batch
mode (perplexity). CPU single token is ~55 ms
(on Ryzen 7950X).
* Some improvement for Q3_K on CUDA
It is now ~22.5 ms/token on my GPU, so ~30% slower than Q4_0.
* Some more CUDA optimizations for Q3_K
Single token is now 20.5 ms/token (~20% slower than Q4_0).
Perplexity is on par with Q4_0.
* Adding Q4_K - scalar, AVX2, CUDA
Performance is the same or perhaps very slightly better than Q4_0 on the CPU.
On the GPU, single token prediction is ~10% better than Q4_0,
batch mode (perplexity is about the same).
* Adding Q6_K - scalar, AVX2, CUDA
Performance is ~40% lower compared to Q4_K on the CPU.
This is to be expected, considering that we are memory bound
on the CPU and the 6-bit model is ~44% larger than the 4-bit.
On the GPU, single token prediction is ~6% lower than Q4_0,
batch mode (perplexity) is even closer (but still slower).
* Adding Q5_K - scalar, AVX2, CUDA
Performance is ~20% lower compared to Q4_K on the CPU.
This is to be expected, considering that we are memory bound
on the CPU and the 5-bit model is ~22% larger than the 4-bit.
On the GPU, single token prediction is about the same as Q4_0
for both, single token and batch prediction.
* Per convention, all QX_K quantizations use Q5_K for output.weight
* Adding quantization mixes
* Quantization mixes: didn't quite get what I wanted in the last commit
* Q4_K dot product for ARM_NEON
* Q6_K dot product for ARM_NEON
* Q5_K dot product for ARM_NEON
* Adding Q3_K dot for ARM_NEON
It is 22% slower than Q4_K, despite the smaller model size.
On x86_64, where we are memory bound, the Q3_K model is
quite a bit faster than Q4_K.
* A very slightly faster ARM_NEON Q3_K dot
* Adding Q2_K - just CUDA for now
Token prediction is pretty good - about 15.5 ms on a RTX 4080.
Perplexity is about the same as Q4_K.
* Adding scalar and AVX2 Q2_K dot
* Adding ARM_NEON Q2_K dot
About the same performance as Q4_K.
* A slightly faster ARM_NEON Q2_K dot
Single token prediction is now ~36 ms on M2 Max.
The code is much simpler too.
* Fixed bug in Q2_K CUDA dot product kernel
Stranegly enough, for the few prompts I tried with the 7B model
the responses looked perfectly reasonable. Only realized something
is not quite right when I tried the larger models and started getting
nonse back.
In any case, Q2_K single token evaluation time on an RTX 4080 in a Ryzen7950X
box iusing CUDA and model fully loaded on the GPU are
~15.5 ms for 7B, ~25.4 ms for 13B, and ~55.8 ms for 30B.
The max number of layers that fit in VRAM for The 65B is 32.
With that, we get ~330 ms per token, which is not that much faster
than just running on the CPU (~470 ms per token).
* Don't print zeros/NaNs when no count histogram has been collected
* A 10% faster CUDA vector dot kernel for Q3_K
Q3_K is now running at ~18.5 ms / token on CUDA,
so the gap to Q4_0 is only 10%.
It seems memory acccess pattern is more important for
performance than the amount of computation the kernel
does.
* A slightly daster Q4_K AVX2 dot product
For perplexity, where we are less memory bound, time per
pass drops by ~5%. Barely measurable difference for single
token prediction.
* A slightly faster ARM_NEON A4_K dot product
* Minor
* Fix quantization error test
We cannot possibly be expecting rmse < 0.002 for 2- and 3-bit
quantization variants.
* Fix docker build
I have been sloppy with vector reinterpret casts on ARM_NEON.
It seems clang is very forgiving in that regard.
* Added forgotten ggml.o dependence on k_quants.h to the Makefile
* Had unintentionally committed the Makefile with -Ofast enabled
* ggml : rename k_quants -> ggml-quants-k, use lowercase in code
---------
Co-authored-by: Iwan Kawrakow <iwan.kawrakow@gmail.com>
Co-authored-by: Georgi Gerganov <ggerganov@gmail.com>
2023-06-05 21:56:18 +02:00
|
|
|
//typedef void (*to_fp32_cuda_t)(const void * x, float * y, int k, cudaStream_t stream);
|
2023-05-13 15:38:36 +02:00
|
|
|
// convert src0 to fp32 on device
|
|
|
|
to_fp32_cuda(c_Q, c_X, x_ne, cudaStream2);
|
|
|
|
CUDA_CHECK(cudaGetLastError());
|
|
|
|
CUDA_CHECK(cudaEventRecord(cudaEvent, cudaStream2));
|
|
|
|
|
|
|
|
// copy src1 to device
|
|
|
|
CUDA_CHECK(ggml_cuda_h2d_tensor_2d(c_Y, src1, i03, i02, cudaStream));
|
|
|
|
|
|
|
|
// wait for conversion
|
|
|
|
CUDA_CHECK(cudaStreamWaitEvent(cudaStream, cudaEvent, 0));
|
|
|
|
|
|
|
|
// compute
|
|
|
|
CUBLAS_CHECK(cublasSetStream(g_cublasH, cudaStream));
|
|
|
|
CUBLAS_CHECK(
|
|
|
|
cublasSgemm(g_cublasH, CUBLAS_OP_T, CUBLAS_OP_N,
|
|
|
|
ne01, ne11, ne10,
|
|
|
|
&alpha, c_X, ne00,
|
|
|
|
c_Y, ne10,
|
|
|
|
&beta, c_D, ne01));
|
|
|
|
}
|
2023-05-01 18:11:07 +02:00
|
|
|
|
|
|
|
// copy dst to host
|
|
|
|
float * d = (float *) ((char *) dst->data + i02*nb2 + i03*nb3);
|
|
|
|
CUDA_CHECK(cudaMemcpyAsync(d, c_D, sizeof(float) * d_ne, cudaMemcpyDeviceToHost, cudaStream));
|
|
|
|
}
|
|
|
|
}
|
|
|
|
|
|
|
|
CUDA_CHECK(cudaDeviceSynchronize());
|
2023-05-13 15:38:36 +02:00
|
|
|
if (!mul_mat_vec) {
|
|
|
|
ggml_cuda_pool_free(d_X, x_size);
|
|
|
|
}
|
2023-05-01 18:11:07 +02:00
|
|
|
ggml_cuda_pool_free(d_Y, y_size);
|
|
|
|
ggml_cuda_pool_free(d_D, d_size);
|
|
|
|
ggml_cuda_pool_free(d_Q, q_size);
|
|
|
|
}
|
|
|
|
|
cuda : loading models directly into VRAM, norm calculation on GPU, broadcasting for ggml_mul (#1483)
* Broadcasting for ggml_mul
* CUDA kernel for ggml_mul, norms in VRAM
* GPU weights not in RAM, direct loading with cuFile
* fixup! GPU weights not in RAM, direct loading with cuFile
* fixup! GPU weights not in RAM, direct loading with cuFile
* define default model path once, sync path with readme (#1366)
* ~7% faster Q5_1 AVX2 code (#1477)
* convert.py: Support models which are stored in a single pytorch_model.bin (#1469)
* Support models in a single pytorch_model.bin
* Remove spurious line with typo
* benchmark-matmul: Print the average of the test results (#1490)
* Remove unused n_parts parameter (#1509)
* Fixes #1511 lambda issue for w64devkit (mingw) (#1513)
* Fix for w64devkit and mingw
* make kv_f16 the default for api users (#1517)
* minor : fix compile warnings
* readme : adds WizardLM to the list of supported models (#1485)
* main : make reverse prompt option act as a stop token in non-interactive mode (#1032)
* Make reverse prompt option act as a stop token in non-interactive scenarios
* Making requested review changes
* Update gpt_params_parse and fix a merge error
* Revert "Update gpt_params_parse and fix a merge error"
This reverts commit 2bb2ff1748513591ad45b175a75ed1d8089d84c8.
* Update gpt_params_parse and fix a merge error take 2
* examples : add persistent chat (#1495)
* examples : add persistent chat
* examples : fix whitespace
---------
Co-authored-by: Georgi Gerganov <ggerganov@gmail.com>
* tests : add missing header
* ggml : use F16 instead of F32 in Q4_0, Q4_1, Q8_0 (#1508)
* ggml : use F16 instead of F32 in Q4_0, Q4_1 and Q8_0
* llama : bump LLAMA_FILE_VERSION to 3
* cuda : update Q4 and Q8 dequantize kernels
* ggml : fix AVX dot products
* readme : update performance table + hot topics
* ggml : fix scalar implementation of Q4_1 dot
* llama : fix compile warnings in llama_set_state_data()
* llama : fix name shadowing and C4146 (#1526)
* Fix name shadowing and C4146
* Fix if macros not using defined when required
* Update llama-util.h
Co-authored-by: github-actions[bot] <41898282+github-actions[bot]@users.noreply.github.com>
* Update llama-util.h
Co-authored-by: github-actions[bot] <41898282+github-actions[bot]@users.noreply.github.com>
* Code style
Co-authored-by: Georgi Gerganov <ggerganov@gmail.com>
---------
Co-authored-by: github-actions[bot] <41898282+github-actions[bot]@users.noreply.github.com>
Co-authored-by: Georgi Gerganov <ggerganov@gmail.com>
* Fix for mingw (#1462)
* llama : add llama_init_backend() API (close #1527)
* feature : add blis and other BLAS implementation support (#1502)
* feature: add blis support
* feature: allow all BLA_VENDOR to be assigned in cmake arguments. align with whisper.cpp pr 927
* fix: version detection for BLA_SIZEOF_INTEGER, recover min version of cmake
* Fix typo in INTEGER
Co-authored-by: Georgi Gerganov <ggerganov@gmail.com>
---------
Co-authored-by: Georgi Gerganov <ggerganov@gmail.com>
* Revert "feature : add blis and other BLAS implementation support (#1502)"
This reverts commit 07e9ace0f9da424d82e75df969642522880feb92.
* GPU weights not in RAM, direct loading with cuFile
* llama : code style fixes + progress print fix
* ggml : ggml_mul better broadcast support
* cmake : workarounds for cufile when CMake version < 3.25
* gg rebase fixup
* Loop in llama.cpp, fixed progress callback
* Attempt clang-tidy fix
* llama : fix vram size computation
* Add forgotten fclose()
---------
Co-authored-by: András Salamon <ott2@users.noreply.github.com>
Co-authored-by: Ilya Kurdyukov <59548320+ilyakurdyukov@users.noreply.github.com>
Co-authored-by: Tom Jobbins <784313+TheBloke@users.noreply.github.com>
Co-authored-by: rankaiyx <rankaiyx@rankaiyx.com>
Co-authored-by: Stephan Walter <stephan@walter.name>
Co-authored-by: DannyDaemonic <DannyDaemonic@gmail.com>
Co-authored-by: Erik Scholz <Green-Sky@users.noreply.github.com>
Co-authored-by: Georgi Gerganov <ggerganov@gmail.com>
Co-authored-by: David Kennedy <dakennedyd@gmail.com>
Co-authored-by: Jason McCartney <jmac@theroot.org>
Co-authored-by: Evan Jones <evan.q.jones@gmail.com>
Co-authored-by: Maxime <672982+maximegmd@users.noreply.github.com>
Co-authored-by: github-actions[bot] <41898282+github-actions[bot]@users.noreply.github.com>
Co-authored-by: Zenix <zenixls2@gmail.com>
2023-05-20 14:19:28 +02:00
|
|
|
void ggml_cuda_mul(const struct ggml_tensor * src0, const struct ggml_tensor * src1, struct ggml_tensor * dst) {
|
|
|
|
GGML_ASSERT(src0->type == GGML_TYPE_F32 && src1->type == GGML_TYPE_F32 && dst->type == GGML_TYPE_F32);
|
|
|
|
ggml_cuda_mul_f32(src0, src1, dst);
|
|
|
|
}
|
|
|
|
|
2023-05-01 18:11:07 +02:00
|
|
|
bool ggml_cuda_can_mul_mat(const struct ggml_tensor * src0, const struct ggml_tensor * src1, struct ggml_tensor * dst) {
|
|
|
|
const int64_t ne10 = src1->ne[0];
|
|
|
|
|
|
|
|
const int64_t ne0 = dst->ne[0];
|
|
|
|
const int64_t ne1 = dst->ne[1];
|
|
|
|
|
|
|
|
// TODO: find the optimal values for these
|
|
|
|
if ((src0->type == GGML_TYPE_F32 || src0->type == GGML_TYPE_F16 || ggml_is_quantized(src0->type)) &&
|
|
|
|
src1->type == GGML_TYPE_F32 &&
|
|
|
|
dst->type == GGML_TYPE_F32 &&
|
2023-05-13 15:38:36 +02:00
|
|
|
((ne0 >= 32 && ne1 >= 32 && ne10 >= 32) || src0->backend == GGML_BACKEND_CUDA)) {
|
2023-05-01 18:11:07 +02:00
|
|
|
return true;
|
|
|
|
}
|
|
|
|
|
|
|
|
return false;
|
|
|
|
}
|
|
|
|
|
|
|
|
bool ggml_cuda_mul_mat_use_f16(const struct ggml_tensor * src0, const struct ggml_tensor * src1, struct ggml_tensor * /* dst */) {
|
|
|
|
size_t src0_sz = ggml_nbytes(src0);
|
|
|
|
size_t src1_sz = ggml_nbytes(src1);
|
|
|
|
|
|
|
|
// mul_mat_q: src0 is converted to fp32 on device
|
|
|
|
size_t mul_mat_q_transfer = src0_sz + src1_sz;
|
|
|
|
|
|
|
|
// mul_mat_f16: src1 is converted to fp16 on cpu
|
|
|
|
size_t mul_mat_f16_transfer = src0_sz + sizeof(half) * ggml_nelements(src1);
|
|
|
|
|
|
|
|
// choose the smaller one to transfer to the device
|
|
|
|
// TODO: this is not always the best choice due to the overhead of converting to fp16
|
|
|
|
return mul_mat_f16_transfer < mul_mat_q_transfer;
|
|
|
|
}
|
|
|
|
|
|
|
|
void ggml_cuda_mul_mat(const ggml_tensor * src0, const ggml_tensor * src1, ggml_tensor * dst, void * wdata, size_t wsize) {
|
|
|
|
GGML_ASSERT(ggml_cuda_can_mul_mat(src0, src1, dst));
|
|
|
|
|
|
|
|
if (src0->type == GGML_TYPE_F32) {
|
|
|
|
ggml_cuda_mul_mat_f32(src0, src1, dst);
|
|
|
|
}
|
|
|
|
else if (src0->type == GGML_TYPE_F16) {
|
|
|
|
if (ggml_cuda_mul_mat_use_f16(src0, src1, dst)) {
|
|
|
|
ggml_cuda_mul_mat_f16(src0, src1, dst, wdata, wsize);
|
|
|
|
}
|
|
|
|
else {
|
|
|
|
ggml_cuda_mul_mat_q_f32(src0, src1, dst);
|
|
|
|
}
|
|
|
|
}
|
|
|
|
else if (ggml_is_quantized(src0->type)) {
|
|
|
|
ggml_cuda_mul_mat_q_f32(src0, src1, dst);
|
|
|
|
}
|
|
|
|
else {
|
|
|
|
GGML_ASSERT(false);
|
|
|
|
}
|
|
|
|
}
|
|
|
|
|
|
|
|
size_t ggml_cuda_mul_mat_get_wsize(const struct ggml_tensor * src0, const struct ggml_tensor * src1, struct ggml_tensor * dst) {
|
|
|
|
if (ggml_cuda_mul_mat_use_f16(src0, src1, dst)) {
|
|
|
|
return ggml_nelements(src1) * sizeof(ggml_fp16_t);
|
|
|
|
}
|
|
|
|
else {
|
|
|
|
return 0;
|
|
|
|
}
|
2023-04-29 02:04:18 +02:00
|
|
|
}
|
2023-05-13 15:38:36 +02:00
|
|
|
|
|
|
|
void ggml_cuda_transform_tensor(ggml_tensor * tensor) {
|
|
|
|
const int64_t ne0 = tensor->ne[0];
|
|
|
|
const int64_t ne1 = tensor->ne[1];
|
|
|
|
const int64_t ne2 = tensor->ne[2];
|
|
|
|
const int64_t ne3 = tensor->ne[3];
|
|
|
|
|
|
|
|
const ggml_type type = tensor->type;
|
|
|
|
const size_t q_sz = ggml_type_size(type) * ne0 * ne1 * ne2 * ne3 / ggml_blck_size(type);
|
|
|
|
|
|
|
|
size_t q_size;
|
cuda : loading models directly into VRAM, norm calculation on GPU, broadcasting for ggml_mul (#1483)
* Broadcasting for ggml_mul
* CUDA kernel for ggml_mul, norms in VRAM
* GPU weights not in RAM, direct loading with cuFile
* fixup! GPU weights not in RAM, direct loading with cuFile
* fixup! GPU weights not in RAM, direct loading with cuFile
* define default model path once, sync path with readme (#1366)
* ~7% faster Q5_1 AVX2 code (#1477)
* convert.py: Support models which are stored in a single pytorch_model.bin (#1469)
* Support models in a single pytorch_model.bin
* Remove spurious line with typo
* benchmark-matmul: Print the average of the test results (#1490)
* Remove unused n_parts parameter (#1509)
* Fixes #1511 lambda issue for w64devkit (mingw) (#1513)
* Fix for w64devkit and mingw
* make kv_f16 the default for api users (#1517)
* minor : fix compile warnings
* readme : adds WizardLM to the list of supported models (#1485)
* main : make reverse prompt option act as a stop token in non-interactive mode (#1032)
* Make reverse prompt option act as a stop token in non-interactive scenarios
* Making requested review changes
* Update gpt_params_parse and fix a merge error
* Revert "Update gpt_params_parse and fix a merge error"
This reverts commit 2bb2ff1748513591ad45b175a75ed1d8089d84c8.
* Update gpt_params_parse and fix a merge error take 2
* examples : add persistent chat (#1495)
* examples : add persistent chat
* examples : fix whitespace
---------
Co-authored-by: Georgi Gerganov <ggerganov@gmail.com>
* tests : add missing header
* ggml : use F16 instead of F32 in Q4_0, Q4_1, Q8_0 (#1508)
* ggml : use F16 instead of F32 in Q4_0, Q4_1 and Q8_0
* llama : bump LLAMA_FILE_VERSION to 3
* cuda : update Q4 and Q8 dequantize kernels
* ggml : fix AVX dot products
* readme : update performance table + hot topics
* ggml : fix scalar implementation of Q4_1 dot
* llama : fix compile warnings in llama_set_state_data()
* llama : fix name shadowing and C4146 (#1526)
* Fix name shadowing and C4146
* Fix if macros not using defined when required
* Update llama-util.h
Co-authored-by: github-actions[bot] <41898282+github-actions[bot]@users.noreply.github.com>
* Update llama-util.h
Co-authored-by: github-actions[bot] <41898282+github-actions[bot]@users.noreply.github.com>
* Code style
Co-authored-by: Georgi Gerganov <ggerganov@gmail.com>
---------
Co-authored-by: github-actions[bot] <41898282+github-actions[bot]@users.noreply.github.com>
Co-authored-by: Georgi Gerganov <ggerganov@gmail.com>
* Fix for mingw (#1462)
* llama : add llama_init_backend() API (close #1527)
* feature : add blis and other BLAS implementation support (#1502)
* feature: add blis support
* feature: allow all BLA_VENDOR to be assigned in cmake arguments. align with whisper.cpp pr 927
* fix: version detection for BLA_SIZEOF_INTEGER, recover min version of cmake
* Fix typo in INTEGER
Co-authored-by: Georgi Gerganov <ggerganov@gmail.com>
---------
Co-authored-by: Georgi Gerganov <ggerganov@gmail.com>
* Revert "feature : add blis and other BLAS implementation support (#1502)"
This reverts commit 07e9ace0f9da424d82e75df969642522880feb92.
* GPU weights not in RAM, direct loading with cuFile
* llama : code style fixes + progress print fix
* ggml : ggml_mul better broadcast support
* cmake : workarounds for cufile when CMake version < 3.25
* gg rebase fixup
* Loop in llama.cpp, fixed progress callback
* Attempt clang-tidy fix
* llama : fix vram size computation
* Add forgotten fclose()
---------
Co-authored-by: András Salamon <ott2@users.noreply.github.com>
Co-authored-by: Ilya Kurdyukov <59548320+ilyakurdyukov@users.noreply.github.com>
Co-authored-by: Tom Jobbins <784313+TheBloke@users.noreply.github.com>
Co-authored-by: rankaiyx <rankaiyx@rankaiyx.com>
Co-authored-by: Stephan Walter <stephan@walter.name>
Co-authored-by: DannyDaemonic <DannyDaemonic@gmail.com>
Co-authored-by: Erik Scholz <Green-Sky@users.noreply.github.com>
Co-authored-by: Georgi Gerganov <ggerganov@gmail.com>
Co-authored-by: David Kennedy <dakennedyd@gmail.com>
Co-authored-by: Jason McCartney <jmac@theroot.org>
Co-authored-by: Evan Jones <evan.q.jones@gmail.com>
Co-authored-by: Maxime <672982+maximegmd@users.noreply.github.com>
Co-authored-by: github-actions[bot] <41898282+github-actions[bot]@users.noreply.github.com>
Co-authored-by: Zenix <zenixls2@gmail.com>
2023-05-20 14:19:28 +02:00
|
|
|
char * dst = (char *) ggml_cuda_pool_malloc(q_sz, &q_size);
|
2023-05-13 15:38:36 +02:00
|
|
|
|
|
|
|
cudaStream_t cudaStream2 = g_cudaStreams2[0];
|
|
|
|
|
|
|
|
// copy tensor to device
|
cuda : loading models directly into VRAM, norm calculation on GPU, broadcasting for ggml_mul (#1483)
* Broadcasting for ggml_mul
* CUDA kernel for ggml_mul, norms in VRAM
* GPU weights not in RAM, direct loading with cuFile
* fixup! GPU weights not in RAM, direct loading with cuFile
* fixup! GPU weights not in RAM, direct loading with cuFile
* define default model path once, sync path with readme (#1366)
* ~7% faster Q5_1 AVX2 code (#1477)
* convert.py: Support models which are stored in a single pytorch_model.bin (#1469)
* Support models in a single pytorch_model.bin
* Remove spurious line with typo
* benchmark-matmul: Print the average of the test results (#1490)
* Remove unused n_parts parameter (#1509)
* Fixes #1511 lambda issue for w64devkit (mingw) (#1513)
* Fix for w64devkit and mingw
* make kv_f16 the default for api users (#1517)
* minor : fix compile warnings
* readme : adds WizardLM to the list of supported models (#1485)
* main : make reverse prompt option act as a stop token in non-interactive mode (#1032)
* Make reverse prompt option act as a stop token in non-interactive scenarios
* Making requested review changes
* Update gpt_params_parse and fix a merge error
* Revert "Update gpt_params_parse and fix a merge error"
This reverts commit 2bb2ff1748513591ad45b175a75ed1d8089d84c8.
* Update gpt_params_parse and fix a merge error take 2
* examples : add persistent chat (#1495)
* examples : add persistent chat
* examples : fix whitespace
---------
Co-authored-by: Georgi Gerganov <ggerganov@gmail.com>
* tests : add missing header
* ggml : use F16 instead of F32 in Q4_0, Q4_1, Q8_0 (#1508)
* ggml : use F16 instead of F32 in Q4_0, Q4_1 and Q8_0
* llama : bump LLAMA_FILE_VERSION to 3
* cuda : update Q4 and Q8 dequantize kernels
* ggml : fix AVX dot products
* readme : update performance table + hot topics
* ggml : fix scalar implementation of Q4_1 dot
* llama : fix compile warnings in llama_set_state_data()
* llama : fix name shadowing and C4146 (#1526)
* Fix name shadowing and C4146
* Fix if macros not using defined when required
* Update llama-util.h
Co-authored-by: github-actions[bot] <41898282+github-actions[bot]@users.noreply.github.com>
* Update llama-util.h
Co-authored-by: github-actions[bot] <41898282+github-actions[bot]@users.noreply.github.com>
* Code style
Co-authored-by: Georgi Gerganov <ggerganov@gmail.com>
---------
Co-authored-by: github-actions[bot] <41898282+github-actions[bot]@users.noreply.github.com>
Co-authored-by: Georgi Gerganov <ggerganov@gmail.com>
* Fix for mingw (#1462)
* llama : add llama_init_backend() API (close #1527)
* feature : add blis and other BLAS implementation support (#1502)
* feature: add blis support
* feature: allow all BLA_VENDOR to be assigned in cmake arguments. align with whisper.cpp pr 927
* fix: version detection for BLA_SIZEOF_INTEGER, recover min version of cmake
* Fix typo in INTEGER
Co-authored-by: Georgi Gerganov <ggerganov@gmail.com>
---------
Co-authored-by: Georgi Gerganov <ggerganov@gmail.com>
* Revert "feature : add blis and other BLAS implementation support (#1502)"
This reverts commit 07e9ace0f9da424d82e75df969642522880feb92.
* GPU weights not in RAM, direct loading with cuFile
* llama : code style fixes + progress print fix
* ggml : ggml_mul better broadcast support
* cmake : workarounds for cufile when CMake version < 3.25
* gg rebase fixup
* Loop in llama.cpp, fixed progress callback
* Attempt clang-tidy fix
* llama : fix vram size computation
* Add forgotten fclose()
---------
Co-authored-by: András Salamon <ott2@users.noreply.github.com>
Co-authored-by: Ilya Kurdyukov <59548320+ilyakurdyukov@users.noreply.github.com>
Co-authored-by: Tom Jobbins <784313+TheBloke@users.noreply.github.com>
Co-authored-by: rankaiyx <rankaiyx@rankaiyx.com>
Co-authored-by: Stephan Walter <stephan@walter.name>
Co-authored-by: DannyDaemonic <DannyDaemonic@gmail.com>
Co-authored-by: Erik Scholz <Green-Sky@users.noreply.github.com>
Co-authored-by: Georgi Gerganov <ggerganov@gmail.com>
Co-authored-by: David Kennedy <dakennedyd@gmail.com>
Co-authored-by: Jason McCartney <jmac@theroot.org>
Co-authored-by: Evan Jones <evan.q.jones@gmail.com>
Co-authored-by: Maxime <672982+maximegmd@users.noreply.github.com>
Co-authored-by: github-actions[bot] <41898282+github-actions[bot]@users.noreply.github.com>
Co-authored-by: Zenix <zenixls2@gmail.com>
2023-05-20 14:19:28 +02:00
|
|
|
for (int64_t i3 = 0; i3 < ne3; i3++) {
|
|
|
|
for (int64_t i2 = 0; i2 < ne2; i2++) {
|
|
|
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int i = i3*ne2 + i2;
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CUDA_CHECK(ggml_cuda_h2d_tensor_2d(dst + i*ne0*ne1, tensor, i3, i2, cudaStream2));
|
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|
|
}
|
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|
|
}
|
2023-05-13 15:38:36 +02:00
|
|
|
|
cuda : loading models directly into VRAM, norm calculation on GPU, broadcasting for ggml_mul (#1483)
* Broadcasting for ggml_mul
* CUDA kernel for ggml_mul, norms in VRAM
* GPU weights not in RAM, direct loading with cuFile
* fixup! GPU weights not in RAM, direct loading with cuFile
* fixup! GPU weights not in RAM, direct loading with cuFile
* define default model path once, sync path with readme (#1366)
* ~7% faster Q5_1 AVX2 code (#1477)
* convert.py: Support models which are stored in a single pytorch_model.bin (#1469)
* Support models in a single pytorch_model.bin
* Remove spurious line with typo
* benchmark-matmul: Print the average of the test results (#1490)
* Remove unused n_parts parameter (#1509)
* Fixes #1511 lambda issue for w64devkit (mingw) (#1513)
* Fix for w64devkit and mingw
* make kv_f16 the default for api users (#1517)
* minor : fix compile warnings
* readme : adds WizardLM to the list of supported models (#1485)
* main : make reverse prompt option act as a stop token in non-interactive mode (#1032)
* Make reverse prompt option act as a stop token in non-interactive scenarios
* Making requested review changes
* Update gpt_params_parse and fix a merge error
* Revert "Update gpt_params_parse and fix a merge error"
This reverts commit 2bb2ff1748513591ad45b175a75ed1d8089d84c8.
* Update gpt_params_parse and fix a merge error take 2
* examples : add persistent chat (#1495)
* examples : add persistent chat
* examples : fix whitespace
---------
Co-authored-by: Georgi Gerganov <ggerganov@gmail.com>
* tests : add missing header
* ggml : use F16 instead of F32 in Q4_0, Q4_1, Q8_0 (#1508)
* ggml : use F16 instead of F32 in Q4_0, Q4_1 and Q8_0
* llama : bump LLAMA_FILE_VERSION to 3
* cuda : update Q4 and Q8 dequantize kernels
* ggml : fix AVX dot products
* readme : update performance table + hot topics
* ggml : fix scalar implementation of Q4_1 dot
* llama : fix compile warnings in llama_set_state_data()
* llama : fix name shadowing and C4146 (#1526)
* Fix name shadowing and C4146
* Fix if macros not using defined when required
* Update llama-util.h
Co-authored-by: github-actions[bot] <41898282+github-actions[bot]@users.noreply.github.com>
* Update llama-util.h
Co-authored-by: github-actions[bot] <41898282+github-actions[bot]@users.noreply.github.com>
* Code style
Co-authored-by: Georgi Gerganov <ggerganov@gmail.com>
---------
Co-authored-by: github-actions[bot] <41898282+github-actions[bot]@users.noreply.github.com>
Co-authored-by: Georgi Gerganov <ggerganov@gmail.com>
* Fix for mingw (#1462)
* llama : add llama_init_backend() API (close #1527)
* feature : add blis and other BLAS implementation support (#1502)
* feature: add blis support
* feature: allow all BLA_VENDOR to be assigned in cmake arguments. align with whisper.cpp pr 927
* fix: version detection for BLA_SIZEOF_INTEGER, recover min version of cmake
* Fix typo in INTEGER
Co-authored-by: Georgi Gerganov <ggerganov@gmail.com>
---------
Co-authored-by: Georgi Gerganov <ggerganov@gmail.com>
* Revert "feature : add blis and other BLAS implementation support (#1502)"
This reverts commit 07e9ace0f9da424d82e75df969642522880feb92.
* GPU weights not in RAM, direct loading with cuFile
* llama : code style fixes + progress print fix
* ggml : ggml_mul better broadcast support
* cmake : workarounds for cufile when CMake version < 3.25
* gg rebase fixup
* Loop in llama.cpp, fixed progress callback
* Attempt clang-tidy fix
* llama : fix vram size computation
* Add forgotten fclose()
---------
Co-authored-by: András Salamon <ott2@users.noreply.github.com>
Co-authored-by: Ilya Kurdyukov <59548320+ilyakurdyukov@users.noreply.github.com>
Co-authored-by: Tom Jobbins <784313+TheBloke@users.noreply.github.com>
Co-authored-by: rankaiyx <rankaiyx@rankaiyx.com>
Co-authored-by: Stephan Walter <stephan@walter.name>
Co-authored-by: DannyDaemonic <DannyDaemonic@gmail.com>
Co-authored-by: Erik Scholz <Green-Sky@users.noreply.github.com>
Co-authored-by: Georgi Gerganov <ggerganov@gmail.com>
Co-authored-by: David Kennedy <dakennedyd@gmail.com>
Co-authored-by: Jason McCartney <jmac@theroot.org>
Co-authored-by: Evan Jones <evan.q.jones@gmail.com>
Co-authored-by: Maxime <672982+maximegmd@users.noreply.github.com>
Co-authored-by: github-actions[bot] <41898282+github-actions[bot]@users.noreply.github.com>
Co-authored-by: Zenix <zenixls2@gmail.com>
2023-05-20 14:19:28 +02:00
|
|
|
tensor->data = dst;
|
2023-05-13 15:38:36 +02:00
|
|
|
tensor->backend = GGML_BACKEND_CUDA;
|
|
|
|
}
|
cuda : loading models directly into VRAM, norm calculation on GPU, broadcasting for ggml_mul (#1483)
* Broadcasting for ggml_mul
* CUDA kernel for ggml_mul, norms in VRAM
* GPU weights not in RAM, direct loading with cuFile
* fixup! GPU weights not in RAM, direct loading with cuFile
* fixup! GPU weights not in RAM, direct loading with cuFile
* define default model path once, sync path with readme (#1366)
* ~7% faster Q5_1 AVX2 code (#1477)
* convert.py: Support models which are stored in a single pytorch_model.bin (#1469)
* Support models in a single pytorch_model.bin
* Remove spurious line with typo
* benchmark-matmul: Print the average of the test results (#1490)
* Remove unused n_parts parameter (#1509)
* Fixes #1511 lambda issue for w64devkit (mingw) (#1513)
* Fix for w64devkit and mingw
* make kv_f16 the default for api users (#1517)
* minor : fix compile warnings
* readme : adds WizardLM to the list of supported models (#1485)
* main : make reverse prompt option act as a stop token in non-interactive mode (#1032)
* Make reverse prompt option act as a stop token in non-interactive scenarios
* Making requested review changes
* Update gpt_params_parse and fix a merge error
* Revert "Update gpt_params_parse and fix a merge error"
This reverts commit 2bb2ff1748513591ad45b175a75ed1d8089d84c8.
* Update gpt_params_parse and fix a merge error take 2
* examples : add persistent chat (#1495)
* examples : add persistent chat
* examples : fix whitespace
---------
Co-authored-by: Georgi Gerganov <ggerganov@gmail.com>
* tests : add missing header
* ggml : use F16 instead of F32 in Q4_0, Q4_1, Q8_0 (#1508)
* ggml : use F16 instead of F32 in Q4_0, Q4_1 and Q8_0
* llama : bump LLAMA_FILE_VERSION to 3
* cuda : update Q4 and Q8 dequantize kernels
* ggml : fix AVX dot products
* readme : update performance table + hot topics
* ggml : fix scalar implementation of Q4_1 dot
* llama : fix compile warnings in llama_set_state_data()
* llama : fix name shadowing and C4146 (#1526)
* Fix name shadowing and C4146
* Fix if macros not using defined when required
* Update llama-util.h
Co-authored-by: github-actions[bot] <41898282+github-actions[bot]@users.noreply.github.com>
* Update llama-util.h
Co-authored-by: github-actions[bot] <41898282+github-actions[bot]@users.noreply.github.com>
* Code style
Co-authored-by: Georgi Gerganov <ggerganov@gmail.com>
---------
Co-authored-by: github-actions[bot] <41898282+github-actions[bot]@users.noreply.github.com>
Co-authored-by: Georgi Gerganov <ggerganov@gmail.com>
* Fix for mingw (#1462)
* llama : add llama_init_backend() API (close #1527)
* feature : add blis and other BLAS implementation support (#1502)
* feature: add blis support
* feature: allow all BLA_VENDOR to be assigned in cmake arguments. align with whisper.cpp pr 927
* fix: version detection for BLA_SIZEOF_INTEGER, recover min version of cmake
* Fix typo in INTEGER
Co-authored-by: Georgi Gerganov <ggerganov@gmail.com>
---------
Co-authored-by: Georgi Gerganov <ggerganov@gmail.com>
* Revert "feature : add blis and other BLAS implementation support (#1502)"
This reverts commit 07e9ace0f9da424d82e75df969642522880feb92.
* GPU weights not in RAM, direct loading with cuFile
* llama : code style fixes + progress print fix
* ggml : ggml_mul better broadcast support
* cmake : workarounds for cufile when CMake version < 3.25
* gg rebase fixup
* Loop in llama.cpp, fixed progress callback
* Attempt clang-tidy fix
* llama : fix vram size computation
* Add forgotten fclose()
---------
Co-authored-by: András Salamon <ott2@users.noreply.github.com>
Co-authored-by: Ilya Kurdyukov <59548320+ilyakurdyukov@users.noreply.github.com>
Co-authored-by: Tom Jobbins <784313+TheBloke@users.noreply.github.com>
Co-authored-by: rankaiyx <rankaiyx@rankaiyx.com>
Co-authored-by: Stephan Walter <stephan@walter.name>
Co-authored-by: DannyDaemonic <DannyDaemonic@gmail.com>
Co-authored-by: Erik Scholz <Green-Sky@users.noreply.github.com>
Co-authored-by: Georgi Gerganov <ggerganov@gmail.com>
Co-authored-by: David Kennedy <dakennedyd@gmail.com>
Co-authored-by: Jason McCartney <jmac@theroot.org>
Co-authored-by: Evan Jones <evan.q.jones@gmail.com>
Co-authored-by: Maxime <672982+maximegmd@users.noreply.github.com>
Co-authored-by: github-actions[bot] <41898282+github-actions[bot]@users.noreply.github.com>
Co-authored-by: Zenix <zenixls2@gmail.com>
2023-05-20 14:19:28 +02:00
|
|
|
|
|
|
|
void ggml_cuda_load_data(const char * fname, struct ggml_tensor * tensor, const size_t offset) {
|
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|
FILE * fp = fopen(fname, "rb");
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const size_t size = ggml_nbytes(tensor);
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void * buf;
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CUDA_CHECK(cudaMalloc(&buf, size));
|
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|
|
void * buf_host = malloc(size);
|
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|
|
|
|
|
#ifdef _WIN32
|
|
|
|
int ret = _fseeki64(fp, (__int64) offset, SEEK_SET);
|
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|
|
#else
|
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|
int ret = fseek(fp, (long) offset, SEEK_SET);
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#endif
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GGML_ASSERT(ret == 0); // same
|
|
|
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|
size_t ret2 = fread(buf_host, size, 1, fp);
|
|
|
|
if (ret2 != 1) {
|
|
|
|
fprintf(stderr, "unexpectedly reached end of file");
|
|
|
|
exit(1);
|
|
|
|
}
|
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|
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|
cudaMemcpy(buf, buf_host, size, cudaMemcpyHostToDevice);
|
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|
|
cudaDeviceSynchronize();
|
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|
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|
tensor->data = buf;
|
|
|
|
free(buf_host);
|
|
|
|
fclose(fp);
|
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|
|
}
|